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import tempfile
from typing import List, Tuple, Any

import gradio as gr
import soundfile as sf
import torch
import torch.nn.functional as torch_functional
from gtts import gTTS
from PIL import Image, ImageDraw
from transformers import (
    AutoTokenizer,
    CLIPModel,
    CLIPProcessor,
    SamModel,
    SamProcessor,
    VitsModel,
    pipeline,
    BlipForQuestionAnswering,
    BlipProcessor,
)


MODEL_STORE = {}

def _normalize_gallery_images(gallery_value: Any) -> List[Image.Image]:
    if not gallery_value:
        return []

    normalized_images: List[Image.Image] = []

    for item in gallery_value:
        if isinstance(item, Image.Image):
            normalized_images.append(item)
            continue

        if isinstance(item, str):
            try:
                image_object = Image.open(item).convert("RGB")
                normalized_images.append(image_object)
            except Exception:
                continue
            continue

        if isinstance(item, (list, tuple)) and item:
            candidate = item[0]
            if isinstance(candidate, Image.Image):
                normalized_images.append(candidate)
                continue

        if isinstance(item, dict):
            candidate = item.get("image") or item.get("value")
            if isinstance(candidate, Image.Image):
                normalized_images.append(candidate)
                continue

    return normalized_images

def get_audio_pipeline(model_key: str):
    if model_key in MODEL_STORE:
        return MODEL_STORE[model_key]

    if model_key == "whisper":
        audio_pipeline = pipeline(
            task="automatic-speech-recognition",
            model="distil-whisper/distil-small.en",
        )
    elif model_key == "wav2vec2":
        audio_pipeline = pipeline(
            task="automatic-speech-recognition",
            model="openai/whisper-small",
        )
    elif model_key == "audio_classifier":
        audio_pipeline = pipeline(
            task="audio-classification",
            model="MIT/ast-finetuned-audioset-10-10-0.4593",
        )
    elif model_key == "emotion_classifier":
        audio_pipeline = pipeline(
            task="audio-classification",
            model="superb/hubert-large-superb-er",
        )
    else:
        raise ValueError(f"Неизвестный тип аудио модели: {model_key}")

    MODEL_STORE[model_key] = audio_pipeline
    return audio_pipeline


def get_zero_shot_audio_pipeline():
    if "audio_zero_shot_clap" not in MODEL_STORE:
        zero_shot_pipeline = pipeline(
            task="zero-shot-audio-classification",
            model="laion/clap-htsat-unfused",
        )
        MODEL_STORE["audio_zero_shot_clap"] = zero_shot_pipeline
    return MODEL_STORE["audio_zero_shot_clap"]


def get_blip_vqa_components() -> Tuple[BlipForQuestionAnswering, BlipProcessor]:
    if "blip_vqa_model" not in MODEL_STORE or "blip_vqa_processor" not in MODEL_STORE:
        blip_processor = BlipProcessor.from_pretrained("Salesforce/blip-vqa-base")
        blip_model = BlipForQuestionAnswering.from_pretrained("Salesforce/blip-vqa-base")
        MODEL_STORE["blip_vqa_model"] = blip_model
        MODEL_STORE["blip_vqa_processor"] = blip_processor

    blip_model = MODEL_STORE["blip_vqa_model"]
    blip_processor = MODEL_STORE["blip_vqa_processor"]
    return blip_model, blip_processor

def get_vision_pipeline(model_key: str):
    if model_key in MODEL_STORE:
        return MODEL_STORE[model_key]

    if model_key == "object_detection_conditional_detr":
        vision_pipeline = pipeline(
            task="object-detection",
            model="microsoft/conditional-detr-resnet-50",
        )
    elif model_key == "object_detection_yolos_small":
        vision_pipeline = pipeline(
            task="object-detection",
            model="hustvl/yolos-small",
        )

    elif model_key == "segmentation":
        vision_pipeline = pipeline(
            task="image-segmentation",
            model="nvidia/segformer-b0-finetuned-ade-512-512",
        )

    elif model_key == "depth_estimation":
        vision_pipeline = pipeline(
            task="depth-estimation",
            model="Intel/dpt-hybrid-midas",
        )

    elif model_key == "captioning_blip_base":
        vision_pipeline = pipeline(
            task="image-to-text",
            model="Salesforce/blip-image-captioning-base",
        )
    elif model_key == "captioning_blip_large":
        vision_pipeline = pipeline(
            task="image-to-text",
            model="Salesforce/blip-image-captioning-large",
        )

    elif model_key == "vqa_blip_base":
        vision_pipeline = pipeline(
            task="visual-question-answering",
            model="Salesforce/blip-vqa-base",
        )
    elif model_key == "vqa_vilt_b32":
        vision_pipeline = pipeline(
            task="visual-question-answering",
            model="dandelin/vilt-b32-finetuned-vqa",
        )

    else:
        raise ValueError(f"Неизвестный тип визуальной модели: {model_key}")

    MODEL_STORE[model_key] = vision_pipeline
    return vision_pipeline


def get_clip_components(clip_key: str) -> Tuple[CLIPModel, CLIPProcessor]:
    model_store_key_model = f"clip_model_{clip_key}"
    model_store_key_processor = f"clip_processor_{clip_key}"

    if model_store_key_model not in MODEL_STORE or model_store_key_processor not in MODEL_STORE:
        if clip_key == "clip_large_patch14":
            clip_name = "openai/clip-vit-large-patch14"
        elif clip_key == "clip_base_patch32":
            clip_name = "openai/clip-vit-base-patch32"
        else:
            raise ValueError(f"Неизвестный вариант CLIP модели: {clip_key}")

        clip_model = CLIPModel.from_pretrained(clip_name)
        clip_processor = CLIPProcessor.from_pretrained(clip_name)

        MODEL_STORE[model_store_key_model] = clip_model
        MODEL_STORE[model_store_key_processor] = clip_processor

    clip_model = MODEL_STORE[model_store_key_model]
    clip_processor = MODEL_STORE[model_store_key_processor]
    return clip_model, clip_processor


def get_silero_tts_model():
    if "silero_tts_model" not in MODEL_STORE:
        silero_model, _ = torch.hub.load(
            repo_or_dir="snakers4/silero-models",
            model="silero_tts",
            language="ru",
            speaker="ru_v3",
        )
        MODEL_STORE["silero_tts_model"] = silero_model
    return MODEL_STORE["silero_tts_model"]


def get_mms_tts_components():
    if "mms_tts_pipeline" not in MODEL_STORE:
        tts_pipeline = pipeline(
            task="text-to-speech",
            model="facebook/mms-tts-rus",
        )
        MODEL_STORE["mms_tts_pipeline"] = tts_pipeline

    return MODEL_STORE["mms_tts_pipeline"]


def get_sam_components() -> Tuple[SamModel, SamProcessor]:
    if "sam_model" not in MODEL_STORE or "sam_processor" not in MODEL_STORE:
        sam_model = SamModel.from_pretrained("Zigeng/SlimSAM-uniform-77")
        sam_processor = SamProcessor.from_pretrained("Zigeng/SlimSAM-uniform-77")
        MODEL_STORE["sam_model"] = sam_model
        MODEL_STORE["sam_processor"] = sam_processor

    sam_model = MODEL_STORE["sam_model"]
    sam_processor = MODEL_STORE["sam_processor"]
    return sam_model, sam_processor



def classify_audio_file(audio_path: str, model_key: str) -> str:
    audio_classifier = get_audio_pipeline(model_key)
    prediction_list = audio_classifier(audio_path)

    result_lines = ["Топ-5 предсказаний:"]
    for prediction_index, prediction_item in enumerate(prediction_list[:5], start=1):
        label_value = prediction_item["label"]
        score_value = prediction_item["score"]
        result_lines.append(
            f"{prediction_index}. {label_value}: {score_value:.4f}"
        )

    return "\n".join(result_lines)


def classify_audio_zero_shot_clap(audio_path: str, label_texts: str) -> str:

    clap_pipeline = get_zero_shot_audio_pipeline()

    label_list = [
        label_item.strip()
        for label_item in label_texts.split(",")
        if label_item.strip()
    ]
    if not label_list:
        return "Не задано ни одной текстовой метки для zero-shot классификации."

    prediction_list = clap_pipeline(
        audio_path,
        candidate_labels=label_list,
    )

    result_lines = ["Zero-Shot Audio Classification (CLAP):"]
    for prediction_index, prediction_item in enumerate(prediction_list, start=1):
        label_value = prediction_item["label"]
        score_value = prediction_item["score"]
        result_lines.append(
            f"{prediction_index}. {label_value}: {score_value:.4f}"
        )

    return "\n".join(result_lines)


def recognize_speech(audio_path: str, model_key: str) -> str:
    speech_pipeline = get_audio_pipeline(model_key)

    prediction_result = speech_pipeline(audio_path)

    return prediction_result["text"]


def synthesize_speech(text_value: str, model_key: str):
    if model_key == "Google TTS":
        with tempfile.NamedTemporaryFile(suffix=".wav", delete=False) as file_object:
            text_to_speech_engine = gTTS(text=text_value, lang="ru")
            text_to_speech_engine.save(file_object.name)
            return file_object.name
    elif model_key == "mms":
        model = VitsModel.from_pretrained("facebook/mms-tts-rus")
        tokenizer = AutoTokenizer.from_pretrained("facebook/mms-tts-rus")

        inputs = tokenizer(text_value, return_tensors="pt")
        with torch.no_grad():
            output = model(**inputs).waveform

        with tempfile.NamedTemporaryFile(suffix=".wav", delete=False) as f:
            sf.write(f.name, output.numpy().squeeze(), model.config.sampling_rate)
            return f.name

    raise ValueError(f"Неизвестная модель: {model_key}")



def detect_objects_on_image(image_object, model_key: str):
    detector_pipeline = get_vision_pipeline(model_key)
    detection_results = detector_pipeline(image_object)

    drawer_object = ImageDraw.Draw(image_object)
    for detection_item in detection_results:
        box_data = detection_item["box"]
        label_value = detection_item["label"]
        score_value = detection_item["score"]

        drawer_object.rectangle(
            [
                box_data["xmin"],
                box_data["ymin"],
                box_data["xmax"],
                box_data["ymax"],
            ],
            outline="red",
            width=3,
        )
        drawer_object.text(
            (box_data["xmin"], box_data["ymin"]),
            f"{label_value}: {score_value:.2f}",
            fill="red",
        )

    return image_object


def segment_image(image_object):
    segmentation_pipeline = get_vision_pipeline("segmentation")
    segmentation_results = segmentation_pipeline(image_object)
    return segmentation_results[0]["mask"]


def estimate_image_depth(image_object):
    depth_pipeline = get_vision_pipeline("depth_estimation")
    depth_output = depth_pipeline(image_object)

    predicted_depth_tensor = depth_output["predicted_depth"]

    if predicted_depth_tensor.ndim == 3:
        predicted_depth_tensor = predicted_depth_tensor.unsqueeze(1)
    elif predicted_depth_tensor.ndim == 2:
        predicted_depth_tensor = predicted_depth_tensor.unsqueeze(0).unsqueeze(0)
    else:
        raise ValueError(
            f"Неожиданная размерность predicted_depth: {predicted_depth_tensor.shape}"
        )

    resized_depth_tensor = torch_functional.interpolate(
        predicted_depth_tensor,
        size=image_object.size[::-1],
        mode="bicubic",
        align_corners=False,
    )

    depth_array = resized_depth_tensor.squeeze().cpu().numpy()
    max_value = float(depth_array.max())

    if max_value <= 0.0:
        return Image.new("L", image_object.size, color=0)

    normalized_depth_array = (depth_array * 255.0 / max_value).astype("uint8")
    depth_image = Image.fromarray(normalized_depth_array, mode="L")
    return depth_image


def generate_image_caption(image_object, model_key: str) -> str:
    caption_pipeline = get_vision_pipeline(model_key)
    caption_result = caption_pipeline(image_object)
    return caption_result[0]["generated_text"]


def answer_visual_question(image_object, question_text: str, model_key: str) -> str:
    if image_object is None:
        return "Пожалуйста, сначала загрузите изображение."

    if not question_text.strip():
        return "Пожалуйста, введите вопрос об изображении."

    if model_key == "vqa_blip_base":
        blip_model, blip_processor = get_blip_vqa_components()

        inputs = blip_processor(
            images=image_object,
            text=question_text,
            return_tensors="pt",
        )

        with torch.no_grad():
            output_ids = blip_model.generate(**inputs)

        decoded_answers = blip_processor.batch_decode(
            output_ids,
            skip_special_tokens=True,
        )
        answer_text = decoded_answers[0] if decoded_answers else ""

        return answer_text or "Модель не смогла сгенерировать ответ."

    vqa_pipeline = get_vision_pipeline(model_key)

    vqa_result = vqa_pipeline(
        image=image_object,
        question=question_text,
    )

    top_item = vqa_result[0]
    answer_text = top_item["answer"]
    confidence_value = top_item["score"]

    return f"{answer_text} (confidence: {confidence_value:.3f})"

def perform_zero_shot_classification(
    image_object,
    class_texts: str,
    clip_key: str,
) -> str:
    clip_model, clip_processor = get_clip_components(clip_key)

    class_list = [
        class_name.strip()
        for class_name in class_texts.split(",")
        if class_name.strip()
    ]
    if not class_list:
        return "Не задано ни одного класса для классификации."

    input_batch = clip_processor(
        text=class_list,
        images=image_object,
        return_tensors="pt",
        padding=True,
    )

    with torch.no_grad():
        clip_outputs = clip_model(**input_batch)
        logits_per_image = clip_outputs.logits_per_image
        probability_tensor = logits_per_image.softmax(dim=1)

    result_lines = ["Zero-Shot Classification Results:"]
    for class_index, class_name in enumerate(class_list):
        probability_value = probability_tensor[0][class_index].item()
        result_lines.append(f"{class_name}: {probability_value:.4f}")

    return "\n".join(result_lines)


def retrieve_best_image(
    gallery_value: Any,
    query_text: str,
    clip_key: str,
) -> Tuple[str, Image.Image | None]:
    image_list = _normalize_gallery_images(gallery_value)

    if not image_list or not query_text.strip():
        return "Пожалуйста, загрузите изображения и введите запрос", None

    clip_model, clip_processor = get_clip_components(clip_key)

    image_inputs = clip_processor(
        images=image_list,
        return_tensors="pt",
        padding=True,
    )
    with torch.no_grad():
        image_features = clip_model.get_image_features(**image_inputs)
        image_features = image_features / image_features.norm(
            dim=-1,
            keepdim=True,
        )

    text_inputs = clip_processor(
        text=[query_text],
        return_tensors="pt",
        padding=True,
    )
    with torch.no_grad():
        text_features = clip_model.get_text_features(**text_inputs)
        text_features = text_features / text_features.norm(
            dim=-1,
            keepdim=True,
        )

    similarity_tensor = image_features @ text_features.T
    best_index_tensor = similarity_tensor.argmax()
    best_index_value = best_index_tensor.item()
    best_score_value = similarity_tensor[best_index_value].item()

    description_text = (
        f"Лучшее изображение: #{best_index_value + 1} "
        f"(схожесть: {best_score_value:.4f})"
    )
    return description_text, image_list[best_index_value]


def segment_image_with_sam_points(
    image_object,
    point_coordinates_list: List[List[int]],
) -> Image.Image:
    if image_object is None:
        raise ValueError("Изображение не передано в segment_image_with_sam_points")

    if not point_coordinates_list:
        return Image.new("L", image_object.size, color=0)

    sam_model, sam_processor = get_sam_components()

    batched_points: List[List[List[int]]] = [point_coordinates_list]
    batched_labels: List[List[int]] = [[1 for _ in point_coordinates_list]]

    sam_inputs = sam_processor(
        image=image_object,
        input_points=batched_points,
        input_labels=batched_labels,
        return_tensors="pt",
    )

    with torch.no_grad():
        sam_outputs = sam_model(**sam_inputs, multimask_output=True)

    processed_masks_list = sam_processor.image_processor.post_process_masks(
        sam_outputs.pred_masks.squeeze(1).cpu(),
        sam_inputs["original_sizes"].cpu(),
        sam_inputs["reshaped_input_sizes"].cpu(),
    )

    batch_masks_tensor = processed_masks_list[0]

    if batch_masks_tensor.ndim != 3 or batch_masks_tensor.shape[0] == 0:
        return Image.new("L", image_object.size, color=0)

    first_mask_tensor = batch_masks_tensor[0]
    mask_array = first_mask_tensor.numpy()

    binary_mask_array = (mask_array > 0.5).astype("uint8") * 255

    mask_image = Image.fromarray(binary_mask_array, mode="L")
    return mask_image


def segment_image_with_sam_points_ui(image_object, coordinates_text: str) -> Image.Image:

    if image_object is None:
        return None

    coordinates_text_clean = coordinates_text.strip()
    if not coordinates_text_clean:
        return Image.new("L", image_object.size, color=0)

    point_coordinates_list: List[List[int]] = []

    for raw_pair in coordinates_text_clean.replace("\n", ";").split(";"):
        raw_pair_clean = raw_pair.strip()
        if not raw_pair_clean:
            continue

        parts = raw_pair_clean.split(",")
        if len(parts) != 2:
            continue

        try:
            x_value = int(parts[0].strip())
            y_value = int(parts[1].strip())
        except ValueError:
            continue

        point_coordinates_list.append([x_value, y_value])

    if not point_coordinates_list:
        return Image.new("L", image_object.size, color=0)

    return segment_image_with_sam_points(image_object, point_coordinates_list)


def parse_point_coordinates_text(coordinates_text: str) -> List[List[int]]:
    if not coordinates_text.strip():
        return []

    point_list: List[List[int]] = []
    for raw_pair in coordinates_text.split(";"):
        cleaned_pair = raw_pair.strip()
        if not cleaned_pair:
            continue
        coordinate_parts = cleaned_pair.split(",")
        if len(coordinate_parts) != 2:
            continue
        try:
            x_value = int(coordinate_parts[0].strip())
            y_value = int(coordinate_parts[1].strip())
        except ValueError:
            continue
        point_list.append([x_value, y_value])

    return point_list

def build_interface():
    with gr.Blocks(title="Multimodal AI Demo") as demo_block:
        gr.Markdown("# AI модели")

        with gr.Tab("Детекция объектов"):
            gr.Markdown("## Детекция объектов")
            with gr.Row():
                object_input_image = gr.Image(
                    label="Загрузите изображение",
                    type="pil",
                )
                object_model_selector = gr.Dropdown(
                    choices=[
                        "object_detection_conditional_detr",
                        "object_detection_yolos_small",
                    ],
                    label="Модель",
                    value="object_detection_conditional_detr",
                    info=(
                        "object_detection_conditional_detr - microsoft/conditional-detr-resnet-50\n"
                        "object_detection_yolos_small       - hustvl/yolos-small"
                    ),
                )
                object_detect_button = gr.Button("Применить")

                object_output_image = gr.Image(
                    label="Результат",
                )

            object_detect_button.click(
                fn=detect_objects_on_image,
                inputs=[object_input_image, object_model_selector],
                outputs=object_output_image,
            )

        ##with gr.Tab("Сегментация"):
        ##    gr.Markdown("## Сегментация")
        ##    with gr.Row():
        ##        segmentation_input_image = gr.Image(
        ##            label="Загрузите изображение",
        ##            type="pil",
        ##        )
        ##        segmentation_button = gr.Button("Применить")
##
##                segmentation_output_image = gr.Image(
##                    label="Маска",
##                )
##
##            segmentation_button.click(
##                fn=segment_image,
##                inputs=segmentation_input_image,
##                outputs=segmentation_output_image,
##            )

        with gr.Tab("Глубина изображения"):
            gr.Markdown("## Глубина (Depth Estimation)")
            with gr.Row():

                depth_input_image = gr.Image(
                    label="Загрузите изображение",
                    type="pil",
                )
                depth_button = gr.Button("Применить")

                depth_output_image = gr.Image(
                    label="Глубины",
                )

            depth_button.click(
                fn=estimate_image_depth,
                inputs=depth_input_image,
                outputs=depth_output_image,
            )

        with gr.Tab("Описание изображений"):
            gr.Markdown("## Описание изображений")
            with gr.Row():
                caption_input_image = gr.Image(
                    label="Загрузите изображение",
                    type="pil",
                )
                caption_model_selector = gr.Dropdown(
                    choices=[
                        "captioning_blip_base",
                        "captioning_blip_large",
                    ],
                    label="Модель",
                    value="captioning_blip_base",
                    info=(
                        "captioning_blip_base  - Salesforce/blip-image-captioning-base (курс)\n"
                        "captioning_blip_large - Salesforce/blip-image-captioning-large"
                    ),
                )
                caption_button = gr.Button("Применить")

                caption_output_text = gr.Textbox(
                    label="Описание изображения",
                    lines=3,
                )

            caption_button.click(
                fn=generate_image_caption,
                inputs=[caption_input_image, caption_model_selector],
                outputs=caption_output_text,
            )

        with gr.Tab("Вопросы к изображению"):
            gr.Markdown("## Visual Question Answering")
            with gr.Row():
                vqa_input_image = gr.Image(
                    label="Загрузите изображение",
                    type="pil",
                )
                vqa_question_text = gr.Textbox(
                    label="Вопрос",
                    placeholder="Вопрос",
                    lines=2,
                )
                vqa_model_selector = gr.Dropdown(
                    choices=[
                        "vqa_blip_base",
                        "vqa_vilt_b32",
                    ],
                    label="Модель",
                    value="vqa_blip_base",
                    info=(
                        "vqa_blip_base - Salesforce/blip-vqa-base (курс)\n"
                        "vqa_vilt_b32  - dandelin/vilt-b32-finetuned-vqa"
                    ),
                )
                vqa_button = gr.Button("Ответить на вопрос")

                vqa_output_text = gr.Textbox(
                    label="Ответ",
                    lines=3,
                )

            vqa_button.click(
                fn=answer_visual_question,
                inputs=[vqa_input_image, vqa_question_text, vqa_model_selector],
                outputs=vqa_output_text,
            )

        with gr.Tab("Zero-Shot классификация"):
            gr.Markdown("## Zero-Shot классификация")
            with gr.Row():
                zero_shot_input_image = gr.Image(
                    label="Загрузите изображение",
                    type="pil",
                )
                zero_shot_classes_text = gr.Textbox(
                    label="Классы для классификации (через запятую)",
                    placeholder="человек, машина, дерево, здание, животное",
                    lines=2,
                )
                clip_model_selector = gr.Dropdown(
                    choices=[
                        "clip_large_patch14",
                        "clip_base_patch32",
                    ],
                    label="модель",
                    value="clip_large_patch14",
                    info=(
                        "clip_large_patch14 - openai/clip-vit-large-patch14 (курс)\n"
                        "clip_base_patch32  - openai/clip-vit-base-patch32"
                    ),
                )
                zero_shot_button = gr.Button("Применить")

                zero_shot_output_text = gr.Textbox(
                    label="Результаты",
                    lines=10,
                )

            zero_shot_button.click(
                fn=perform_zero_shot_classification,
                inputs=[zero_shot_input_image, zero_shot_classes_text, clip_model_selector],
                outputs=zero_shot_output_text,
            )

        with gr.Tab("Поиск изображений в папке"):
            gr.Markdown("## Поиск изображений в папке")
            with gr.Row():

                retrieval_dir = gr.File(
                    label="Загрузите папку с изображениями",
                    file_count="directory",
                    file_types=["image"],
                    type="filepath",
                )
                retrieval_query_text = gr.Textbox(
                    label="Текстовый запрос",
                    placeholder="описание того, что вы ищете...",
                    lines=2,
                )
                retrieval_clip_selector = gr.Dropdown(
                    choices=[
                        "clip_large_patch14",
                        "clip_base_patch32",
                    ],
                    label="модель",
                    value="clip_large_patch14",
                    info=(
                        "clip_large_patch14 - openai/clip-vit-large-patch14 (курс)\n"
                        "clip_base_patch32  - openai/clip-vit-base-patch32 (альтернатива)"
                    ),
                )
                retrieval_button = gr.Button("Поиск")

                retrieval_output_text = gr.Textbox(
                    label="Результат",
                )
                retrieval_output_image = gr.Image(
                    label="Наиболее подходящее изображение",
                )

            retrieval_button.click(
                fn=retrieve_best_image,
                inputs=[retrieval_dir, retrieval_query_text, retrieval_clip_selector],
                outputs=[retrieval_output_text, retrieval_output_image],
            )

    return demo_block


if __name__ == "__main__":
    interface_block = build_interface()
    interface_block.launch(share=True)