--- license: apache-2.0 datasets: - benschill/brain-tumor-collection metrics: - accuracy pipeline_tag: image-classification --- # Brain Tumor Classification Model ## Overview This repository contains a deep learning model for brain tumor classification using Hugging Face Transformers. The model has been trained on a brain tumor dataset consisting of 5712 training samples and validated on 1311 samples. It is designed to classify brain tumor images into four classes: 'glioma', 'meningioma', 'notumor', and 'pituitary'. ## Model Details - **Framework**: Hugging Face Transformers - **Dataset**: Brain Tumor Dataset - **Training Data**: 5712 samples - **Validation Data**: 1311 samples - **Input Shape**: 130x130 pixels with 3 channels (RGB) - **Data Preprocessing**: Data is normalized - **Validation Accuracy**: 72% ## Classes The model classifies brain tumor images into the following classes: - 'glioma' (Class 0) - 'meningioma' (Class 1) - 'notumor' (Class 2) - 'pituitary' (Class 3) ## Usage You can use this model for brain tumor classification tasks. Here's an example of how to load and use the model for predictions in Python: ```python from transformers import AutoModelForSequenceClassification, AutoTokenizer import tensorflow as tf import numpy as np # Load the pre-trained model model_name = "model/brain_tumor_model.h5" # Replace with the actual model name model = tf.keras.models.load_model(model_name) # to get prediction x = numpy array image pred = np.argmax(model.predict(x),axis=-1) # class label class_labels = {0: 'glioma', 1: 'meningioma', 2: 'notumor', 3: 'pituitary'}