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import torch
from PIL import Image, ImageDraw, ImageFont
from transformers import GroundingDinoProcessor
from modeling_grounding_dino import GroundingDinoForObjectDetection

from PIL import Image, ImageDraw, ImageFont
from itertools import cycle
import os
from datetime import datetime
import gradio as gr
import tempfile

# Load model and processor
model_id = "fushh7/llmdet_swin_large_hf"
model_id = "fushh7/llmdet_swin_tiny_hf"
DEVICE = "cpu"

print(f"[INFO] Using device: {DEVICE}")
print(f"[INFO] Loading model from {model_id}...")

processor = GroundingDinoProcessor.from_pretrained(model_id)
model = GroundingDinoForObjectDetection.from_pretrained(model_id).to(DEVICE)
model.eval()

print("[INFO] Model loaded successfully.")

# Pre-defined palette (extend or tweak as you like)
BOX_COLORS = [
    "deepskyblue", "red", "lime", "dodgerblue",
    "cyan", "magenta", "yellow",
    "orange", "chartreuse"
]

def save_cropped_images(original_image, boxes, labels, scores):
    """
    Salva ogni regione ritagliata definita dalle bounding box in file temporanei.
    
    :param original_image: Immagine PIL originale
    :param boxes: Lista di bounding box [x_min, y_min, x_max, y_max]
    :param labels: Lista di etichette per ogni box
    :param scores: Lista di punteggi di confidenza
    :return: Lista dei percorsi dei file temporanei salvati
    """
    saved_paths = []
    
    for i, (box, label, score) in enumerate(zip(boxes, labels, scores)):
        # Crea un file temporaneo
        with tempfile.NamedTemporaryFile(suffix=".jpg", delete=False) as tmp_file:
            filepath = tmp_file.name
        
        # Ritaglia la regione dall'immagine originale
        cropped_img = original_image.crop(box)
        
        # Salva l'immagine ritagliata
        cropped_img.save(filepath)
        saved_paths.append(filepath)
    
    return saved_paths

def draw_boxes(image, boxes, labels, scores, colors=BOX_COLORS, font_path="arial.ttf", font_size=16):
    """
    Draw bounding boxes and labels on a PIL Image.

    :param image: PIL Image object
    :param boxes: Iterable of [x_min, y_min, x_max, y_max]
    :param labels: Iterable of label strings
    :param scores: Iterable of scalar confidences (0-1)
    :param colors: List/tuple of colour names or RGB tuples
    :param font_path: Path to a TTF font for labels
    :param font_size: Int size of font to use, default 16
    :return: PIL Image with drawn boxes
    """
    # Ensure we can iterate colours indefinitely
    colour_cycle = cycle(colors)
    draw = ImageDraw.Draw(image)

    # Pick a font (fallback to default if missing)
    try:
        font = ImageFont.truetype(font_path, size=font_size)
    except IOError:
        font = ImageFont.load_default(size=font_size)

    # Assign a consistent colour per label (optional)
    label_to_colour = {}

    for box, label, score in zip(boxes, labels, scores):
        # Reuse colour if label seen before, else take next from cycle
        colour = label_to_colour.setdefault(label, next(colour_cycle))

        x_min, y_min, x_max, y_max = map(int, box)

        # Draw rectangle
        draw.rectangle([x_min, y_min, x_max, y_max], outline=colour, width=2)

        # Compose text
        text = f"{label} ({score:.3f})"
        text_size = draw.textbbox((0, 0), text, font=font)[2:]

        # Draw text background for legibility
        bg_coords = [x_min, y_min - text_size[1] - 4,
                     x_min + text_size[0] + 4, y_min]
        draw.rectangle(bg_coords, fill=colour)

        # Draw text
        draw.text((x_min + 2, y_min - text_size[1] - 2),
                  text, fill="black", font=font)

    return image

def resize_image_max_dimension(image, max_size=4096):
    """
    Resize an image so that the longest side is at most max_size pixels,
    while maintaining the aspect ratio.

    :param image: PIL Image object
    :param max_size: Maximum dimension in pixels (default: 1024)
    :return: PIL Image object (resized)
    """
    width, height = image.size

    # Check if resizing is needed
    if max(width, height) <= max_size:
        return image

    # Calculate new dimensions maintaining aspect ratio
    ratio = max_size / max(width, height)
    new_width = int(width * ratio)
    new_height = int(height * ratio)

    # Resize the image using high-quality resampling
    return image.resize((new_width, new_height), Image.Resampling.LANCZOS)

def detect_and_draw(
    img: Image.Image,
    text_query: str,
    box_threshold: float = 0.14,
    text_threshold: float = 0.13,
    save_crops: bool = True
):
    """
    Detect objects described in `text_query`, draw boxes, return the image and crops.
    Note: `text_query` must be lowercase and each concept ends with a dot
          (e.g. 'a cat. a remote control.')
    """

    # Make sure text is lowered
    text_query = text_query.lower()

    # If the image size is too large, we make it smaller
    img = resize_image_max_dimension(img, max_size=4096)

    # Preprocess the image
    inputs = processor(images=img, text=text_query, return_tensors="pt").to(DEVICE)

    with torch.no_grad():
        outputs = model(**inputs)

    results = processor.post_process_grounded_object_detection(
        outputs,
        inputs.input_ids,
    #    box_threshold=box_threshold,
        text_threshold=text_threshold,
        target_sizes=[img.size[::-1]]
    )[0]

    img_out = img.copy()
    img_out = draw_boxes(
        img_out,
        boxes  = results["boxes"].cpu().numpy(),
        labels = results.get("text_labels", results.get("labels", [])),
        scores = results["scores"]
    )
    
    # Lista per i percorsi dei crop
    crop_paths = []
    
    if save_crops:
        crop_paths = save_cropped_images(
            img,
            boxes=results["boxes"].cpu().numpy(),
            labels=results.get("text_labels", results.get("labels", [])),
            scores=results["scores"]
        )
        print(f"Generated {len(crop_paths)} cropped images")

    return img_out, crop_paths

# Create example list dynamically from examples directory
def load_examples_from_directory(directory="examples"):
    """
    Carica automaticamente tutti i file JPG dalla directory degli esempi.
    
    :param directory: Percorso della directory contenente gli esempi
    :return: Lista di esempi nel formato [filepath, text_query, box_threshold, text_threshold]
    """
    examples = []
    
    # Verifica se la directory esiste
    if not os.path.exists(directory):
        print(f"[WARNING] Directory '{directory}' non trovata. Creala e aggiungi file JPG.")
        return examples
    
    # Cerca tutti i file JPG nella directory
    #jpg_files = [f for f in os.listdir(directory) if f.lower().endswith('.jpg')]
    jpg_files = [f for f in os.listdir(directory) if f.lower().endswith(('.jpg', '.png'))]
    if not jpg_files:
        print(f"[WARNING] Nessun file JPG trovato nella directory '{directory}'")
        return examples
    
    print(f"[INFO] Trovati {len(jpg_files)} file JPG nella directory examples/")
    
    # Crea gli esempi per ogni file JPG
    for jpg_file in jpg_files:
        filepath = os.path.join(directory, jpg_file)
        examples.append([filepath, "heads.", 0.24, 0.23])
    
    return examples

# Popola automaticamente la lista degli esempi
examples = load_examples_from_directory()

# Se non sono stati trovati esempi, usa un esempio di fallback
if not examples:
    print("[INFO] Usando esempio di fallback")
    examples = [
        ["examples/stickers(1).jpg", "heads.", 0.24, 0.23],
    ]

# Funzione per pulire i file temporanei dopo l'uso
def cleanup_temp_files(crop_paths):
    for path in crop_paths:
        try:
            os.unlink(path)
        except:
            pass

# Create Gradio demo
with gr.Blocks(title="ClasmateFaceFinder", css=".gradio-container {max-width: 100% !important}") as demo:
    gr.Markdown("# Classmate  Finder")
    gr.Markdown("Upload an image  and adjust thresholds to see detections.")
    
    with gr.Row():
        with gr.Column():
            image_input = gr.Image(type="pil", label="Input Image")
            text_query = gr.Textbox(
                value="head.",
                label="Text Query (lowercase, end each with '.', for example 'a bird. a tree.')"
            )
            box_threshold = gr.Slider(0.0, 1.0, 0.14, step=0.05, label="Box Threshold")
            text_threshold = gr.Slider(0.0, 1.0, 0.13, step=0.05, label="Text Threshold")
            submit_btn = gr.Button("Detect")
        
        with gr.Column():
            image_output = gr.Image(type="pil", label="Detections")
    
    # Galleria per i crop
    gallery = gr.Gallery(
        label="Detected Crops",
        columns=[8],
        rows=[2],
        object_fit="contain",
        height="auto"
    )
    
    # Esempi
    gr.Examples(
        examples=examples,
        inputs=[image_input, text_query, box_threshold, text_threshold],
        outputs=[image_output, gallery],
        fn=detect_and_draw,
        cache_examples=True
    )
    
    # Pulsante di submit
    submit_btn.click(
        fn=detect_and_draw,
        inputs=[image_input, text_query, box_threshold, text_threshold],
        outputs=[image_output, gallery]
    )
    
    # Pulisci i file temporanei quando viene caricato un nuovo esempio
    demo.load(
        fn=lambda: None,
        inputs=None,
        outputs=None,
    )

if __name__ == "__main__":
    demo.launch(server_name="0.0.0.0", share=False)