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import streamlit as st
import pandas as pd
import matplotlib.pyplot as plt
# Define functions for individual pages
# Structured Data - Excel Page
def excel_details_page():
st.title("Structured Data - Excel Details")
st.markdown("<h3 style='text-align:; color: #4a90e2;'>1. Handling Excel Files (.xlsx)</h3>", unsafe_allow_html=True)
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>Excel Files are (XLSX) Created using the Microsoft Excel application.</li>
<li>Structured data format.</li>
<li>Excel files automatically handle encoding during creation, so no encoding issues arise.</li>
<li>If there are extra values in a row, Excel creates a new column and fills it with <b>null values</b> instead of throwing a <b>parsing error</b>.</li>
</ul>
""", unsafe_allow_html=True)
st.markdown("<h3 style='text-align:; color: #ffa500;'>2. Reading Excel Files (.xlsx)</h3>", unsafe_allow_html=True)
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>Use the <b>pandas</b> function, <b>pd.read_excel("path")</b>, to read an Excel file.</li>
<li>By default, it reads only one sheet.</li>
<li>To read multiple sheets, specify the <b>sheet_name</b> parameter with a list of sheet indices.</li>
</ul>""", unsafe_allow_html=True)
st.code('df = pd.read_excel("path", sheet_name=[0, 1, 2])', language="python")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li><b>The Result is a Dictionary</b></li>
<li>Keys: Sheet names.</li>
<li>Values: DataFrames corresponding to each sheet.</li>
</ul>""", unsafe_allow_html=True)
st.code('df_first_sheet = df[0] # First sheet\n'
'df_second_sheet = df[1] # Second sheet\n'
'df_third_sheet = df[2] # Third sheet', language="python")
st.markdown("<h3 style='text-align:; color: #dda0dd;'>3. Converting Data to Excel Files (.xlsx)</h3>", unsafe_allow_html=True)
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>To save a single DataFrame to an Excel file</li>
</ul>""", unsafe_allow_html=True)
st.code('df[0].to_excel("path")', language="python")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>To save multiple sheets, use <b>pd.ExcelWriter</b></li>
</ul>""", unsafe_allow_html=True)
st.code("""with pd.ExcelWriter("path") as writer:
df[0].to_excel(writer, sheet_name="Sheet1")
df[1].to_excel(writer, sheet_name="Sheet2")""", language="python")
st.markdown("<h5 style='color:black;'>Download Jupyter Notebook or PDF with Code Examples</h5>", unsafe_allow_html=True)
notebook_url = "https://colab.research.google.com/drive/1gkwpP7dFNXwQ7EgmXw-Mh9ifENAMVg8I"
st.write("Click below for Jupyter notebook:")
st.markdown(f"[Open Jupyter Notebook in Google Colab]({notebook_url})")
if st.button("Back to Home"):
st.session_state['page'] = "home"
# Semi-Structured Data - CSV Page
def csv_details_page():
# Display the content about semi-structured data
st.header("1. What is Semi-Structured Data?")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>Semi-structured data does not follow a strict tabular format but still has some organizational properties.</li>
<li>Examples include CSV files, JSON, and XML.</li>
</ul>
""", unsafe_allow_html=True)
st.header("2. Working with CSV Files")
st.subheader("a) Reading a CSV File")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>Use the <b>pandas</b> function, <code>pd.read_csv("file.csv")</code>, to read a CSV file.</li>
<li>This function loads the file into a DataFrame.</li>
</ul>
""", unsafe_allow_html=True)
# Code example for reading CSV
st.code("""
import pandas as pd
df = pd.read_csv("file.csv")
print(df.head())
""", language="python")
st.subheader("b) Handling Parse Errors")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>If extra value is added to a row a <code> Parsing Error </code> </li>
<li>It happens when we create csv with the help of <code> text editors </code> .</li>
<li>If we add extra value to row it don't throw error instead it creates the new column for extra value it fills with <b> null</b> when converted from excel to csv.</li>
</ul>
""", unsafe_allow_html=True)
st.markdown("""
<p><b>Solution:</b> Use the <code>on_bad_lines</code> parameter in pandas:</p>
<ul style="font-family: Arial; line-height: 1.6;">
<li><code>"error"</code>: Stops the program and raises an error.</li>
<li><code>"skip"</code>: Skips rows with errors.</li>
<li><code>"warn"</code>: Skips rows with errors and shows the line numbers.</li>
</ul>
""", unsafe_allow_html=True)
# Code example for handling parse errors
st.code("""
# Skip bad lines
df = pd.read_csv("file.csv", on_bad_lines="skip")
# Warn about bad lines
df = pd.read_csv("file.csv", on_bad_lines="warn")
""", language="python")
st.subheader("c) Unicode Decode Error")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>Each character, when saved, is represented by a unique number (ASCII/Unicode code point).</li>
<li> ord("a") → 97 , bin(97) → 0b1100001 (Binary representation of 'a') </li>
<li>Characters are saved in memory using a specific encoding, typically UTF-8 by default.</li>
<li>Unicode Decode Error: Occurs when the system is unable to decode a file due to an incorrect or incompatible encoding.To solve this, you need to find the appropriate encoding for the file.</li>
<li>Python uses utf-8 by default for encoding, but files may be saved with other encodings.</li>
<li><code>Using the encodings module</code>: To explore the available encodings, you can import encodings in Python</li>
<li> There are <code>326</code> different encoding aliases available in Python, which can be accessed via <code>encodings.aliases.aliases.,/code></li>
</ul>
""", unsafe_allow_html=True)
# Code example for trying multiple encodings
st.code("""
import encodings
# Get all encodings
encodings_list = list(encodings.aliases.aliases.keys())
# Try reading the file with different encodings
for encoding in encodings_list:
try:
df = pd.read_csv("file.csv", encoding=encoding)
print(f"Success with encoding: {encoding}")
break
except:
pass # Skip to the next encoding
""", language="python")
st.subheader("Lookup Error:")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>Occurs if you try to access an encoding that is not available or supported.</li>
<li>Use a try-except block to handle it gracefully</li>
</ul>
""", unsafe_allow_html=True)
st.code('''
except LookupError:
print("Incorrect Encoding".format(y))
''')
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>After this when we get <code> Parse error </code> to solve that error add <code> on_badlines = "skip" parametre </code> .</li>
</ul>
""", unsafe_allow_html=True)
st.subheader("d) Handling Large CSV Files")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>When working with large CSV files, the file might not fit into memory, leading to a <code>MemoryError</code>.</li>
<li><code>Solution: Use chunksize to break the file into smaller chunks.</code></li>
<li>: To handle each chunk, you can iterate through the chunks and process them as needed.</li>
</ul>
""", unsafe_allow_html=True)
# Code example for handling large files
st.code("""
chunk_size = 100
chunks = pd.read_csv("large_file.csv", chunksize=chunk_size)
for i, chunk in enumerate(chunks):
print(f"Processing chunk {i + 1} with {chunk.shape[0]} rows")
""", language="python")
st.header("3. Summary")
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li><b>Parse Errors:</b> Use <code>on_bad_lines</code> to handle them (<code>skip</code> or <code>warn</code>).</li>
<li><b>Encoding Issues:</b> Try different encodings to fix <b>UnicodeDecodeError</b>.</li>
<li><b>Large Files:</b> Use <code>chunksize</code> to process files in smaller parts.</li>
</ul>
""", unsafe_allow_html=True)
st.markdown("<h5 style='color:black;'>Download Jupyter Notebook or PDF with Code Examples</h5>", unsafe_allow_html=True)
notebook_url = "https://colab.research.google.com/drive/1pXrfcADbDzHzB-Q_oOBZyi7_97uZgRG7#scrollTo=b8491518"
st.write("Click below for Jupyter notebook:")
st.markdown(f"[Open Jupyter Notebook in Google Colab]({notebook_url})")
# Button to go back to the main page
if st.button("Back to Home"):
st.session_state['page'] = "home"
# Semi-Structured Data - JSON Page
def json_details_page():
import pandas as pd
import requests
# Page configuration
st.set_page_config(page_title="JSON & API Tutorial", layout="wide")
# Define colors
main_heading_color = "blue"
sub_heading_color = "green"
bullet_point_color = "black"
# Main Title
st.markdown(f"<h1 style='color:{main_heading_color};'>JSON and API Tutorial</h1>", unsafe_allow_html=True)
# Section 1: Handling JSON Files
st.markdown(f"<h2 style='color:{sub_heading_color};'>Handling JSON Files</h2>", unsafe_allow_html=True)
st.markdown(f"<h3 style='color:{sub_heading_color};'>Introduction</h3>", unsafe_allow_html=True)
st.markdown(
f"<ul style='color:{bullet_point_color};'>"
f"<li>JSON (JavaScript Object Notation) is the second most commonly used data format after CSV.</li>"
f"<li>It is widely used, especially in APIs.</li>"
f"<li>JSON data can be either structured or semi-structured.</li>"
f"</ul>",
unsafe_allow_html=True,
)
st.markdown(f"<h3 style='color:{sub_heading_color};'>Default JSON Format</h3>", unsafe_allow_html=True)
st.code('{"Name": ["P1", "P2"], "Age": [23, 24]}', language="json")
# Code example for reading JSON
st.markdown(f"<h3 style='color:{sub_heading_color};'>Reading JSON Files in Python</h3>", unsafe_allow_html=True)
st.code(
"""
import pandas as pd
data = '{"Name": ["P1", "P2"], "Age": [23, 24]}'
df = pd.read_json(data)
print(df)
""",
language="python",
)
# Section 2: JSON Formats in Pandas
st.markdown(f"<h2 style='color:{sub_heading_color};'>JSON Formats in Pandas</h2>", unsafe_allow_html=True)
st.markdown(
f"<ul style='color:{bullet_point_color};'>"
f"<li><b>Orient = 'index':</b> Indices become main keys and column names become subkeys.</li>"
f"<li><b>Orient = 'columns':</b> Column names become main keys and indices become subkeys.</li>"
f"<li><b>Orient = 'values':</b> JSON is converted as a list of values.</li>"
f"<li><b>Orient = 'split':</b> Stores data along with columns and indices.</li>"
f"</ul>",
unsafe_allow_html=True,
)
# Section 3: Collecting Data from APIs
st.markdown(f"<h2 style='color:{sub_heading_color};'>Collecting Data from APIs</h2>", unsafe_allow_html=True)
st.markdown(
f"<ul style='color:{bullet_point_color};'>"
f"<li>API (Application Programming Interface) is a bridge that enables communication between two applications.</li>"
f"<li>It uses HTTP protocols to exchange data securely.</li>"
f"<li>If the response code is <b>200</b>, the request was successful.</li>"
f"<li>For accessing secure data, you may need an API key.</li>"
f"</ul>",
unsafe_allow_html=True,
)
# Code example for using an API
st.markdown(f"<h3 style='color:{sub_heading_color};'>Example: Fetching Data from an API</h3>", unsafe_allow_html=True)
st.code(
"""
import requests
import pandas as pd
url = "https://api.example.com/data"
response = requests.get(url)
if response.status_code == 200:
data = response.json()
df = pd.json_normalize(data)
print(df)
else:
print(f"Failed to fetch data. Status code: {response.status_code}")
""",
language="python",
)
# Google Colab Link
st.markdown("<h5 style='color:black;'>Download Jupyter Notebook or PDF with Code Examples</h5>", unsafe_allow_html=True)
notebook_url = "https://colab.research.google.com/drive/1pIg_zmj04lVmPTdiTU2bU9BLAR2mS5wi?usp=sharing"
st.write("Click below for Jupyter notebook:")
st.markdown(f"[Open Jupyter Notebook in Google Colab]({notebook_url})")
if st.button("Back to Home"):
st.session_state['page'] = "home"
# Semi-Structured Data - XML Page
def xml_details_page():
st.title("Semi Structured Data - XML Details")
st.markdown("<h1 style='text-align:; color: blue;'>Handling XML Files(.xlsx)</h1>", unsafe_allow_html=True)
st.markdown("<h2 style='color: green;'>What is XML?</h2>", unsafe_allow_html=True)
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li>XML (Extensible Markup Language) is a markup language used for storing and transporting semi-structured data.</li>
<li><code>XML</code> is a markup language, meaning it uses tags to define the structure and content of data.</li>
<li> It is semi-structured, meaning it has a flexible structure that can be defined by the user.</li>
<li>Tags are not predefined, allowing users to create their own custom tags.</li>
</ul>
""", unsafe_allow_html=True)
st.markdown("<h3 style='text-align:; color: #ffa500;'>Basic Structure of XML(.xlsx)</h3>", unsafe_allow_html=True)
st.markdown("""
<ul style="font-family: Arial; line-height: 1.6;">
<li> XML documents consist of elements, which are represented by <b>tags</b>.</li>
<li> Tags have an opening and closing tag, with the content enclosed within.</li>
<li>The basic structure of an XML tag is: `<openingtag>content</closingtag>`</li>
</ul>""", unsafe_allow_html=True)
st.markdown("<h2 style='color: orange;'>Example of XML Data</h2>", unsafe_allow_html=True)
st.code("""<persons>
<person>
<name>HARI </name>
<age>22</age>
<gender>Male</gender>
</person>
<person>
<name>CHANDAN</name>
<age>21</age>
<gender>Male</gender>
</person>
</persons>
""", language="xml")
# Google Colab Link
st.markdown("<h5 style='color:blue;'>Download Jupyter Notebook or PDF with Code Examples</h5>", unsafe_allow_html=True)
notebook_url = "https://colab.research.google.com/drive/14xGAxu_rKAl_eslODfQXoTEpN7NU4lk6"
st.write("Click below for Jupyter notebook:")
st.markdown(f"[Open Jupyter Notebook in Google Colab]({notebook_url})")
if st.button("Back to Home"):
st.session_state['page'] = "home"
# Semi-Structured Data - HTML Page
def html_details_page():
st.title("Semi-Structured Data - HTML Details")
st.markdown("""
**HTML** (HyperText Markup Language) is used to structure web pages.
- Semi-structured data with nested tags.
""")
# App title
st.title("Working with HTML Data in Python")
# Section: HTML and DataFrames
st.header("HTML and DataFrames")
st.write("""
- **HTML** stands for HyperText Markup Language and is a semi-structured format.
- HTML uses tags like `<table>`, `<tr>`, `<th>`, and `<td>` to show table data.
- Unlike XML, HTML doesn’t let you create any custom tags.
- Not all HTML can be changed into dataframes, especially plain text like paragraphs.
- Usually, only table-related tags (`<table>`, `<tr>`, `<th>`, `<td>`) can be converted into dataframes.
""")
# Section: Reading HTML Files
st.write("**How to Read HTML Files:**")
st.code("""
import pandas as pd
tables = pd.read_html("path_or_url")
""", language="python")
st.write("""
- Use `pd.read_html()` to read tables from an HTML file or a website.
- This function collects all tables and gives them as a list of dataframes.
""")
st.write("**How to Get Specific Tables:**")
st.code("""
# Select the first table from the list
table = tables[0]
""", language="python")
st.write("""
- The tables are stored as a list, and you can access them using their index number.
""")
st.write("**Limitations:**")
st.write("""
- Some HTML files or websites cannot be read, even if they have tables.
- Issues like file permissions or restrictions may stop reading.
""")
st.write("**Using `match` to Find Specific Tables:**")
st.code("""
# Read a specific table by searching for a keyword
tables = pd.read_html("path_or_url", match="keyword")
""", language="python")
st.write("""
- The `match` parameter lets you find tables with specific keywords.
- This is useful to pick the right table when many are present.
""")
# Section: Exporting DataFrames
st.header("Exporting DataFrames to HTML")
st.write("**How to Export a DataFrame to HTML:**")
st.code("""
# Save a dataframe as an HTML file
df.to_html("output.html")
""", language="python")
st.write("""
- This converts your dataframe into an HTML file.
- You can save the HTML file at a specified location.
""")
# Google Colab Link
st.markdown("<h5 style='color:red;'>Download Jupyter Notebook or PDF with Code Examples</h5>", unsafe_allow_html=True)
notebook_url = "https://colab.research.google.com/drive/1IgIEoWqw-pHSSMjuWzY2FlFJVIoNwL3C"
st.write("Click below for Jupyter notebook:")
st.markdown(f"[Open Jupyter Notebook in Google Colab]({notebook_url})")
if st.button("Back to Home"):
st.session_state['page'] = "home"
# Unstructured Data - Image Page
def image_details_page():
st.title("Unstructured Data - Image Details")
st.markdown("""
**Images** are unstructured data represented in pixel values.
- Formats include JPEG, PNG, BMP, etc.
- Libraries like OpenCV and PIL are used for image processing.
""")
import numpy as np
# Helper function for subheadings
def subheading(text):
"""Displays a subheader with consistent styling."""
st.markdown(f"<h3 style='color:teal;'>{text}</h3>", unsafe_allow_html=True)
# Sidebar for navigation
st.sidebar.title("Navigation")
page = st.sidebar.radio("Go to", ["Introduction", "Basic Operations","Image Conversions"])
# App Title and Description
st.title("Image Processing Fundamentals")
st.write("""
This app introduces the basics of image processing, helping you understand how images are formed, represented, and handled programmatically.
It's designed for beginners exploring computer vision concepts.
""")
# Introduction Section
if page == "Introduction":
st.header("Introduction")
st.write("""
Images play a crucial role in various fields, including art, science, and technology.
In this app, you will learn:
- How images are captured and represented.
- Different color spaces and their applications.
- Basic operations on images using Python libraries.
""")
st.header("Understanding Images")
# Subsections
subheading("What is an Image?")
st.write("""
An image is a **2D representation of light**, created when light reflects off an object and is captured by a camera or our eyes.
""")
subheading("How is an Image Formed?")
st.write("""
- **Light Source**: Light from sources like the sun or a bulb hits an object.
- **Reflection**: Light bounces off the object's surface.
- **Capture**: The reflected light is recorded by a camera sensor or the human eye.
- In images pixels are the **feautures** and these pixels contains **information** as shape,color,patterns.No of pixels = height*width these both decides the resolution.More no of pixels more clarity more information gained.
""")
subheading("Why is an Image Represented as a Grid?")
st.write("""
- Pixels in an image are arranged in a grid-like structure.Each **row** in the grid corresponds to a **data point** (a group of pixels).Each **column** in the grid represents a **feature** of those data points.
- Both image data and tabular data can be visualized as grids.This concept aligns with tabular data, where the structure is similar, but the interpretation differs:
- **In images**: Each row represents a set of data points (pixels), and the columns represent their features.
- **In tables**:Each row represents an individual data point, and each column corresponds to a feature of that data point.
""")
st.subheader("Interactive Pixel Grid")
# User Input for Height and Width
height = st.number_input("Enter Image Height (pixels):", min_value=1, max_value=50, value=10, step=1)
width = st.number_input("Enter Image Width (pixels):", min_value=1, max_value=50, value=10, step=1)
# Display Resolution
resolution = height * width
st.write(f"**Image Resolution**: {resolution} pixels")
# Generate and Display Pixel Grid
st.write("**Pixel Grid Visualization:**")
grid = np.random.rand(int(height), int(width)) # Generate random grid values
fig, ax = plt.subplots()
cax = ax.imshow(grid, cmap="magma")
plt.colorbar(cax, ax=ax) # Add color bar for context
ax.set_title("Pixel Grid")
ax.set_xlabel("Width(pixels)", fontsize=8) # Set smaller font size
ax.set_ylabel("Height(pixels)", fontsize=8) # Set smaller font size
# Render the Plot
st.pyplot(fig)
st.header("Color Spaces")
# Explanation for Color Spaces
st.write("""
Color space is a technique used to represent the colors of an image. This technique helps us preserve the colors while converting them into numerical values, which machine learning models can understand.
For example, in image classification tasks like differentiating between dogs and cats:
- The first step is to collect a bunch of dog and cat images. These images may be in formats such as PNG, JPG, or JPEG.
- However, machine learning models can only understand numbers, so color spaces are used to convert the image colors into numerical representations.
""")
# Subheading for Black and White color space
st.markdown("<h3 style='text-align:; color: #4a90e2;'>1. Black and White</h3>", unsafe_allow_html=True)
st.write("""
- Represents only two colors: **Black (0) Pixels** and **White (255) Pixels**.
- **Limitation**: It only preserves black and white.
""")
st.image("https://huggingface.co/spaces/hari3485/DiveIntoML/resolve/main/Images/blackwhite.jpg")
# Subheading for Grayscale color space
st.markdown("<h3 style='text-align:; color: #4169E1;'>2. Grayscale</h3>", unsafe_allow_html=True)
st.write("""
- 0 pixel value means Black: It represents the darkest shade in a grayscale image.
- 1 piexel value means White: It represents the brightest shade in a grayscale image.
- Pixel Values between 1 and 254: These Pixel values represent various shades of gray, with increasing brightness as the value approaches 254.
- **Limitation**:
- Gray Scale images cannot preserve coloured images as it is having only gray shades
""")
st.image("https://huggingface.co/spaces/hari3485/DiveIntoML/resolve/main/Images/grayscale.jpeg")
# Subheading for RGB color space
st.markdown("<h3 style='text-align:; color: #483D8B;'>3. RGB </h3>", unsafe_allow_html=True)
st.image("https://huggingface.co/spaces/hari3485/DiveIntoML/resolve/main/Images/bunny.jpg")
st.write("""
- To represent coloured image we have to convert image in 3D array , Mixture of three 2D arrays is **RGB**.
- The value in each array ranges from R(0,255) ,G(0,255) ,B(0,255)
- By mixing different intensities of red, green, and blue,we can create over **16 million possible colors**.
- The **Red channel** has pixel values with red set to 255, and green and blue to 0.
- The **Green channel** has pixel values with green set to 255, and red and blue to 0.
- The **Blue channel** has pixel values with blue set to 255, and red and green to 0.
- When merged, these channels form a complete color image.
""")
st.image("https://huggingface.co/spaces/hari3485/DiveIntoML/resolve/main/Images/bunny1.jpg")
# Basic Operations Section
elif page =="Basic Operations":
st.title("What is OpenCV?")
st.header("Understanding Open Source Computer Vision")
# Introduction
st.write("""
OpenCV (Open Source Computer Vision) is a free and open-source library designed for real-time computer vision tasks.
It is widely used in industries like healthcare, security, robotics, and AI to process images and videos effectively.
""")
st.code("""
import cv2
import numpy as np
""")
# Features Section
st.subheader("Key Features of OpenCV:")
st.markdown("""
- **Image Processing**: Resize, crop, filter, and manipulate images easily.
- **Object Detection**: Detect faces, objects, and track their movements in real-time.
- **Video Analysis**: Perform video stabilization, motion detection, and frame-by-frame analysis.
- **Machine Learning Integration**: Combine with AI frameworks for advanced tasks like face recognition and augmented reality.
""")
# Theory Section
st.markdown("""
<h3 style="color: #9400d3;"> Reading an image</h3>
""", unsafe_allow_html=True)
st.markdown("""
- It converts an 2D image into Machine representation value array.
- **cv2.imread("path)** this method going to convert image to 3D aray as it used default colour space **RGB**.
- The data type of image should be **uint8**.
""")
st.code("""
# Code to read an image
img = cv2.imread('BGR_image', 1) # by default it considers this as coloured image
print(img)
""")
st.code("""
img = cv2.imread("gray_scale_image",0) # when we want it in 2D array use parametre `flags=0` it considers as grayscale image
print(img)
""")
# Theory Section
st.markdown("""
<h3 style="color: #FF7F00;"> imshow()</h3>
""", unsafe_allow_html=True)
st.markdown("""
- After creating or reading an image, we can display it using OpenCV. Here’s how the key functions work together:
- The `imshow()` function creates a pop-up window to display the image.
- Internally, it converts the numerical array into a visual image.
- **Parameters**:
Window Name: Title of the pop-up window (string).
Image Array: The array representing the image.
""")
# Theory Section
st.markdown("""
<h3 style="color: #FF7F00;"> waitkey()</h3>
""", unsafe_allow_html=True)
st.markdown("""
- The main purpose Waits for a key press and adds a delay before closing the pop-up window.
- `waitKey(0)` or `waitKey()` Keeps the window open indefinitely until a key is pressed.
- `waitkey(10)` After 10 milli seconds the pop up window will be closed when we use waitkey(n) after n milliseconds window closes.
""")
# Theory Section
st.markdown("""
<h3 style="color: #FF7F00;"> destroyAllWindows()</h3>
""", unsafe_allow_html=True)
st.markdown("""
- **Purpose**: Closes all OpenCV-created windows.
- **Usage**:This makes sure that memory is cleared and helps avoid crashes by getting rid of resources when the image is no longer needed.
""")
st.code("""
cv2.destroyAllWindows() # When we give this all temporary windows will be closed
""")
st.markdown("""
<h5 style='color: green;'>These three functions must work together to display and manage images effectively. /h5>
""", unsafe_allow_html=True)
st.code("""
img = cv2.imshow("Window name",image)
# Window name : Name of the window
# image : The image we created
# Code to wait for a key press
cv2.waitKey() # Wait indefinitely until key press
# Code to close all windows
cv2.destroyAllWindows() # Close all OpenCV windows
""")
st.markdown("""
### Additional Notes
- **Why Use `cv2.waitKey`?**
Without this, the image display window will close immediately after the program finishes execution.
- **Handling Pop-Up Windows**
- Use `cv2.destroyAllWindows()` to close all pop-up windows and release system resources properly.
""")
st.markdown("""
<h3 style="color: #9400d3;">Saving an Image</h3>
""", unsafe_allow_html=True)
# About imwrite() function
st.write("""
To save an image file in OpenCV, we use the **imwrite()** function.
It converts the numerical array (image data) back into an image file format, such as `.jpg`, `.png`, or `.bmp`.
""")
# Code example
st.code("""
cv2.imwrite('image.jpg', image_array) # 'image.jpg' it is the name of the output file
print("Wow your image is saved!")
""", language="python")
elif page =="Image Conversions":
from PIL import Image
# Title of the app
st.markdown("""
<h3 style="color: #9400d3;">Creating a Black and White Image</h3>
""", unsafe_allow_html=True)
# Explanation
st.write("""
In OpenCV, black and white images are created by filling a matrix with pixel values:
- **Black image**: When the pixel values are set to 0.
- **White image**: When the pixel values are set to 255.
""")
# Display the code
st.code("""
import numpy as np
import streamlit as st
white_img= np.full((500,500),255,dtype=np.uint8)
black_img = np.zeros((500,500),dtype=np.uint8)
cv2.imshow("white",white_img) #white image is displayed
cv2.imshow("black",black_img) #black image is displayed
cv2.waitKey() # until we close the window it displays the image
cv2.destroyAllWindows() # Close all temporary windows
""", language="python")
# Section 1: Grayscale Image
st.markdown("""
<h3 style="color: #9400d3;">Creating a Grayscale Image</h3>
""", unsafe_allow_html=True)
st.write("""
In a grayscale image, 0 is black, 255 is white, and pixel values between 1 and 254 represent varying shades of gray
""")
st.code("""
# Grayscale image creation
gray_img = np.full((500, 500), 155, dtype=np.uint8) #155 is a medium-light gray, closer to white than black.
# Display in OpenCV
cv2.imshow("Gray Image", gray_img) #Gray scale image is created
cv2.waitKey(0)
cv2.destroyAllWindows()
""", language="python")
st.markdown("""
<h3 style="color: #9400d3;">Creating a BGR image</h3>
""", unsafe_allow_html=True)
st.write("""
- The **Red channel** has pixel values with red set to 255, and green and blue to 0.
- The **Green channel** has pixel values with green set to 255, and red and blue to 0.
- The **Blue channel** has pixel values with blue set to 255, and red and green to 0.
- When merged, these channels form a complete color image.
""")
st.markdown("""
<p style="color: #FF6347;">To represent a coloured image, we have to convert the image into a 3D array. The mixture of three 2D arrays is <strong style="color: #1E90FF;">RGB</strong>.</p>
""", unsafe_allow_html=True)
st.code("""
# Create individual color channels
b = np.full((200, 200), 255, dtype=np.uint8) # Blue channel
g = np.zeros((200, 200), dtype=np.uint8) # Green channel
r = np.zeros((200, 200), dtype=np.uint8) # Red channel
# Merge the color channels to create RGB images
b_img = cv2.merge([b, g, r]) # Blue image
g_img = cv2.merge([g, b, r]) # Green image
r_img = cv2.merge([r, g, b]) # Red image
# Display the images
cv2.imshow("Blue", b_img)
cv2.imshow("Green", g_img)
cv2.imshow("Red", r_img)
cv2.waitKey(0) # Wait until a key is pressed
cv2.destroyAllWindows() # Close all OpenCV windows
""", language="python")
st.markdown("""
<h3 style="color: #e25822;">Channel Splitting</h3>
""", unsafe_allow_html=True)
# About cv2.split() function
st.write("""
The `cv2.split()` function in OpenCV is used to separate an image into its individual color channels.
It generates separate single-channel arrays for each color, which can then be manipulated independently.
For example, it can divide an RGB image into its Red, Green, and Blue components.
""")
# Syntax for cv2.split() function
st.code("""
# Syntax for cv2.split()
channels = cv2.split(image)
# image: The input image (e.g., an RGB image).
# channels: A list of single-channel images (e.g., Blue, Green, Red).
""", language="python")
# Heading for the section
st.markdown("""
<h3 style="color: #9400d3;">Splitting Channels </h3>
""", unsafe_allow_html=True)
# Code Example for Splitting and Merging Color Channels
st.code("""
img = cv2.imread("path of the image") # Load the image
b, g, r = cv2.split(img) # Separate the image into Blue, Green, and Red channels
zeros = np.zeros(img.shape[:-1], dtype=np.uint8) # Create a blank array for the empty channels
blue_channel = cv2.merge([b, zeros, zeros]) # The Blue channel has blue set to 255, and red and green to 0
green_channel = cv2.merge([zeros, g, zeros]) # The Green channel has green set to 255, and red and blue to 0
red_channel = cv2.merge([zeros, zeros, r]) # The Red channel has red set to 255, and green and blue to 0
# Show the separate color channels and the original image
cv2.imshow("Blue_channel", blue_channel)
cv2.imshow("Green_channel", green_channel)
cv2.imshow("Red_channel", red_channel)
cv2.waitKey(0)
cv2.destroyAllWindows()
""", language="python")
st.image("https://huggingface.co/spaces/hari3485/DiveIntoML/resolve/main/Images/BGR%20to%20Split.jpg")
st.markdown("""
<h3 style="color: #9400d3;">Combining Channels </h3>
""", unsafe_allow_html=True)
st.write("""
To create a full color image from separate single-channel images (such as Red, Green, and Blue), the **cv2.merge()** function is used.
It combines individual color channels into a single, complete color image.
""")
# Code Example for Splitting and Merging Color Channels
st.code("""
img = cv2.imread("path of the image") # Load the image
b, g, r = cv2.split(img) # Separate the image into Blue, Green, and Red channels
zeros = np.zeros(img.shape[:-1], dtype=np.uint8) # Create a blank array for the empty channels
blue_channel = cv2.merge([b, zeros, zeros]) # The Blue channel has blue set to 255, and red and green to 0
green_channel = cv2.merge([zeros, g, zeros]) # The Green channel has green set to 255, and red and blue to 0
red_channel = cv2.merge([zeros, zeros, r]) # The Red channel has red set to 255, and green and blue to 0
# Show the separate color channels and the original image
cv2.imshow("Blue_channel", blue_channel)
cv2.imshow("Green_channel", green_channel)
cv2.imshow("Red_channel", red_channel)
cv2.imshow("merged_image", cv2.merge([blue_channel, green_channel, red_channel]))
cv2.waitKey(0)
cv2.destroyAllWindows()
""", language="python")
st.image("https://huggingface.co/spaces/hari3485/DiveIntoML/resolve/main/Images/merging%20BGR.jpg")
# Title of the app
st.markdown("""
<h3 style="color: #9400d3;">Converting colour spaces</h3>
""", unsafe_allow_html=True)
st.write("""
When working with image arrays, we might need to convert or modify their color spaces.
OpenCV provides the `cv2.cvtColor()` method to achieve this. It allows us to change an image's color space to a desired format **BGR to Grayscale**.
""")
st.code("""
# Convert from BGR to Grayscale
img_gray = cv2.cvtColor(BGR_img, cv2.COLOR_BGR2GRAY)
""")
st.image("https://huggingface.co/spaces/hari3485/DiveIntoML/resolve/main/Images/BGR2Gray.jpg")
if st.button("Go Back"):
st.experimental_set_query_params(page="Introduction")
if st.button("Back to Home"):
st.session_state['page'] = "home"
# Unstructured Data - Video Page
def video_details_page():
# Definition of Video
st.markdown("<h3 style='text-align: left; color: #FF00FF;'>What is video?</h3>", unsafe_allow_html=True)
st.write("""
A video is essentially a series of images, called frames, played quickly one after another to create the illusion of motion.
For example, a sequence of images like I1, I2, I3, ..., In transitions so rapidly that the individual frames aren't noticeable to our eyes.
This rapid switching between frames creates the appearance of continuous motion.
**The smoothness of a video depends on how many frames are shown per second, measured in frames per second (fps)**
- **30 fps**: 30 frames are displayed every second, which gives decent smoothness.
- **60 fps**: 60 frames are displayed every second, making the video smoother.
""")
st.markdown("<h3 style='text-align: left; color: #FF00FF;'>Understanding Video Processing with OpenCV</h3>", unsafe_allow_html=True)
st.write("""
**Load the Video**
- Load Video: Use `cv2.VideoCapture()` with the video file path to load and open the video.
**Read Frames**
- Read Frames: OpenCV reads each video frame in a loop using the read() function until the video ends.
**Display Frames**
- Frames are displayed sequentially with cv2.imshow(), simulating video playback.
**Exit Playback**
- Press a key (e.g., 'q') to stop playback and exit the loop.
""")
st.code("""
# Reading the video
vid = cv2.VideoCapture("Here give the path of the vedio")
# Dividing the video into frames and looping each and very frame by suing while loop as we dont how many frames
while True:
succ,img = vid.read()
if succ == False: # here if the frame doesnot exist break
break
cv2.imshow("Window name",img) # display the video
if cv2.waitKey(1)& 255 == ord("q"): # to interupt the vedio or to come out of video in the middle use ascii value
break
cv2.destroyAllWindows() # removing all the tempory memory RAM
""", language = "python")
# Use st.markdown to display the explanation
st.markdown("<h3 style='text-align: left; color: #FF00FF;'>Understanding vid.read()</h3>", unsafe_allow_html=True)
st.markdown("""
- `vid.read()` is used to grab one frame (image) at a time from a video.
- It gives back two things:
1. **`succ`**: A `True` or `False` value.
- **`True`** means the frame was successfully loaded.
- **`False`** means the frame could not be loaded (usually because the video has ended).
2. **`img`**: The actual frame (image) from the video, which is in the form of a NumPy array. This image can then be processed just like any regular picture.
""")
st.markdown("<h3 style='text-align: left; color: #FF00FF;'>Understanding cv2.waitkey()</h3>", unsafe_allow_html=True)
st.markdown("""
- **`cv2.waitKey(1)`**:
- This function waits for a key to be pressed for 1 millisecond.
- If a key is pressed, it returns the code of that key. If no key is pressed, it returns `-1`.
- **`& 255`**:
- This part ensures the key code is correctly interpreted across different systems.
- It keeps only the last 8 bits of the code (the actual key code).
- **`ord('q')`**:
- This gets the ASCII value of the letter `'q'`.
- The ASCII value for `'q'` is 113.
- This is used to check if the user pressed the `'q'` key to stop the program.
""")
st.code("""
if cv2.waitKey(1)& 255 == ord("q"):
break
""",language="python")
st.markdown("<h3 style='text-align: left; color: #FF00FF;'>Converting BGR Video to Grayscale</h3>", unsafe_allow_html=True)
# Use st.markdown to display the explanation
st.markdown("""
You can process video frames one by one and convert them as needed. In this example, we will:
- Convert each frame of a video from BGR (Blue, Green, Red) color format to grayscale (a black-and-white image).
- Display both the original video frames and the grayscale frames side by side.
""")
# Use st.code to display the OpenCV code
st.code("""
import cv2
# Load the video
vid = cv2.VideoCapture("path of the video")
while True:
succ, img = vid.read() # Reading the video
# Dividing the video into frames and looping through each frame as we don't know how many frames
if succ == False: # If the frame does not exist, break
break
img1 = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY) # Converting BGR image to Grayscale
cv2.imshow("video_color", img) # Display the original video
cv2.imshow("video_gray", img1) # Display the grayscale video
if cv2.waitKey(1) & 255 == ord("q"): # To interrupt the video or stop in the middle using ASCII value
break
cv2.destroyAllWindows() # Removing all the temporary memory (RAM)
""", language="python")
st.markdown("<h3 style='text-align: left; color: #FF00FF;'>Splitting video into 3 Different channels (B,G,R)</h3>", unsafe_allow_html=True)
# Use st.markdown to display the explanation
st.markdown("""
Each frame of a colored video consists of three channels: Blue, Green, and Red (BGR). In this example, we will:
- Split each frame of the video into separate Blue, Green, and Red color channels.
- Display the original video alongside each individual color channel.
""")
# Use st.code to display the OpenCV code
st.code("""
import cv2
import numpy as np
# Load the video
vid = cv2.VideoCapture("path of the video")
while True:
succ, img = vid.read()
if succ == False:
break
# Split the image into Blue, Green, and Red channels
b, g, r = cv2.split(img)
z = np.zeros(b.shape, dtype=np.uint8) # Create a blank channel
# Convert the image to grayscale
img1 = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
# Display the individual color channels
cv2.imshow("bluechannel", cv2.merge([b, z, z]))
cv2.imshow("green_channel", cv2.merge([z, g, z]))
cv2.imshow("red_channel", cv2.merge([z, z, r]))
# Display the grayscale video
cv2.imshow("video_gray", img1)
if cv2.waitKey(100) & 255 == ord("q"):
break
cv2.destroyAllWindows() # Remove temporary windows
""", language="python")
st.markdown("<h3 style='text-align: left; color: #ffa500;'>Live Streaming with Webcam</h3>", unsafe_allow_html=True)
# Display the explanation in markdown
st.markdown("""
OpenCV allows you to use your webcam for live video streaming. The `cv2.VideoCapture()` function is used to activate the webcam. Here's how it works:
- `cv2.VideoCapture(0)`: The `0` tells OpenCV to use the default webcam on your computer. If you have multiple cameras, you can use other numbers (like 1, 2) to access those cameras.
- This function establishes a connection with the webcam and begins capturing video frames in real time.
The following example demonstrates how to:
- Activate the webcam.
- Display the live stream.
- Close the webcam window by pressing the 'p' key.
""")
# Display the OpenCV code
st.code("""
import cv2
# Capture video from the default webcam (ID = 0)
vid = cv2.VideoCapture(0)
while True:
suc, img = vid.read()
if suc == False:
print("Web Camera is not working")
break
cv2.imshow("live stream", img)
# Exit the loop when 'p' key is pressed
if cv2.waitKey(1) & 255 == ord('p'):
break
cv2.destroyAllWindows()
""", language="python")
st.markdown("<h3 style='text-align: left; color: #ffa500;'>Dual Webcam Stream Color vs Grayscale Capture</h3>", unsafe_allow_html=True)
st.markdown("""
- 1. The first webcam displays the original video feed from the camera.
- 2. The second webcam shows the same video feed, but converted to grayscale, where the color information is removed, leaving only varying shades of gray.
""")
st.code("""
vid = cv2.VideoCapture(0) # default id = 0
while True:
suc,img=vid.read()
if suc == False:
print("Web Camera is not working")
break
img1 = cv2.cvtColor(img,cv2.COLOR_BGR2GRAY)
cv2.imshow("live stream",img) # orginal stream
cv2.imshow("Grayscale live stream",img1) # Gray Scale stream
if cv2.waitKey(1) & (255) == ord("q"):
break
cv2.destroyAllWindows()
""",language = "python")
st.markdown("<h3 style='text-align: center; left: #ffa500;'> Webcam Stream with RGB Channel Separation</h3>", unsafe_allow_html=True)
st.markdown("""
- The image captured by the webcam is divided into three parts: Red, Green, and Blue. This is done using `cv2.split()`
- The separate Red, Green, and Blue images are then combined back into three full-color images using `cv2.merge()`.
- This lets us see each color channel on its own, but in full color.
""")
st.code("""
vid = cv2.VideoCapture(0) # default id = 0
while True:
suc,img=vid.read()
if suc == False:
print("Web Camera is not working")
break
b,g,r=cv2.split(img)
z = np.zeros(b.shape,dtype=np.uint8)
cv2.imshow("live stream",img)
cv2.imshow("livestream1",cv2.merge([b,z,z])) # Blue channel
cv2.imshow("livestream2",cv2.merge([z,g,z])) # Green channel
cv2.imshow("livestream3",cv2.merge([z,z,r])) # Red channel
if cv2.waitKey(1) & (255) == ord("q"):
break
cv2.destroyAllWindows()
""",language="python")
st.markdown("<h3 style='text-align: left; color: #ffa500;'>Webcam Frame Capture and Save</h3>", unsafe_allow_html=True)
st.markdown("""
- **Activate Webcam**: The webcam is activated automatically when the application starts.
- **Capture Frames**: Press the 's' key to capture and save the current frame to the 'captured_frames' folder.
- **Stop Webcam Feed**: Press the 'p' key to stop the webcam and close the application.
""")
st.code("""
vid = cv2.VideoCapture(0) # default id = 0
c=0
while True:
suc,img=vid.read()
if suc == False:
print("Web Camera is not working")
break
cv2.imshow("video",img)
if cv2.waitKey(1)& (255) == ord("s"):
cv2.imwrite("Path to save".format(c),img) #path to save the images
print("image have been captured")
c+=1
if cv2.waitKey(1)& (255) == ord("q"):
break
cv2.destroyAllWindows()
""",language = "python")
if st.button("Back to Home"):
st.session_state['page'] = "home"
# Main Page
def main_page():
# Title and Introduction
st.title("📊 What is Data?")
st.write("Data is information we collect to understand or learn something. It can be numbers, words, pictures, or even videos. For example, counting the number of students in a class gives us data.")
# Types of Data
st.header("📂 Types of Data")
st.write("Data is divided into three types based on how it is organized: **Structured Data**, **Semi-Structured Data**, and **Unstructured Data**.")
data_type = st.radio("Select Data Type:", ["Structured", "Semi-Structured", "Unstructured"])
if data_type == "Structured":
if st.button("Excel"):
st.session_state['page'] = "excel"
elif data_type == "Semi-Structured":
st.write("Semi-Structured Data includes formats like CSV, JSON, XML, and HTML.")
if st.button("CSV"):
st.session_state['page'] = "csv"
if st.button("JSON"):
st.session_state['page'] = "json"
if st.button("XML"):
st.session_state['page'] = "xml"
if st.button("HTML"):
st.session_state['page'] = "html"
elif data_type == "Unstructured":
st.write("Unstructured Data includes formats like Images and Videos.")
if st.button("Image"):
st.session_state['page'] = "image"
if st.button("Video"):
st.session_state['page'] = "video"
# Structured Data
st.subheader("1️⃣ Structured Data 🗂️")
st.write("""
This type of data is well-organized, like in a table with rows and columns. It's easy to store and analyze.
- **Examples:**
- Names, phone numbers, and addresses in a spreadsheet.
- Sales records in a database.
""")
st.write("**💡 Simple Story:** Think of a grocery store where every item has its price, category, and stock neatly listed on a computer.")
# Semi-Structured Data
st.subheader("2️⃣ Semi-Structured Data 📜")
st.write("""
This type of data is somewhat organized but not as strict as tables. It has a format but doesn’t fit perfectly into rows and columns.
- **Examples:**
- Emails (with subject, sender, and message).
- JSON or XML files used in apps and websites.
""")
st.write("**💡 Simple Story:** Imagine writing a letter that has a date, sender’s name, and the main message. It’s structured in parts but not as fixed as a table.")
# Unstructured Data
st.subheader("3️⃣ Unstructured Data 📷")
st.write("""
This is data without any specific organization. It’s harder to analyze directly.
- **Examples:**
- Photos and videos.
- Social media posts or text messages.
""")
st.write("**💡 Simple Story:** Think of a messy drawer with random papers, photos, and tools. It’s useful, but you need to sort it out to find what you need.")
# Conclusion
st.header("🔍 Conclusion")
st.write("Understanding the types of data helps us decide how to use it. Structured data is like a neat file cabinet, semi-structured is like a stack of papers with labels, and unstructured is like a box of random items.")
# Initialize session state
if 'page' not in st.session_state:
st.session_state['page'] = "home"
# Route to appropriate page
if st.session_state['page'] == "home":
main_page()
elif st.session_state['page'] == "excel":
excel_details_page()
elif st.session_state['page'] == "csv":
csv_details_page()
elif st.session_state['page'] == "json":
json_details_page()
elif st.session_state['page'] == "xml":
xml_details_page()
elif st.session_state['page'] == "html":
html_details_page()
elif st.session_state['page'] == "image":
image_details_page()
elif st.session_state['page'] == "video":
video_details_page()
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