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"""
Based upon ImageCaptionLoader in LangChain version: langchain/document_loaders/image_captions.py
But accepts preloaded model to avoid slowness in use and CUDA forking issues

Loader that uses H2O DocTR OCR models to extract text from images

"""
from typing import List, Union, Any, Tuple, Optional

import requests
import torch
from langchain.docstore.document import Document
from langchain.document_loaders import ImageCaptionLoader
import numpy as np
from utils import get_device, clear_torch_cache, NullContext
from doctr.utils.common_types import AbstractFile


class H2OOCRLoader(ImageCaptionLoader):
    """Loader that extracts text from images"""

    def __init__(self, path_images: Union[str, List[str]] = None, layout_aware=False, gpu_id=None):
        super().__init__(path_images)
        self._ocr_model = None
        self.layout_aware = layout_aware
        self.gpu_id = gpu_id if isinstance(gpu_id, int) and gpu_id >= 0 else 0

        self.device = 'cpu'
        # ensure self.device set
        self.set_context()

    def set_context(self):
        if get_device() == 'cuda':
            import torch
            n_gpus = torch.cuda.device_count() if torch.cuda.is_available() else 0
            if n_gpus > 0:
                self.context_class = torch.device
                if self.gpu_id is not None:
                    self.device = "cuda:%d" % self.gpu_id
                else:
                    self.device = 'cuda'
            else:
                self.device = 'cpu'
        else:
            self.device = 'cpu'

    def load_model(self):
        try:
            from weasyprint import HTML  # to avoid warning
            from doctr.models.zoo import ocr_predictor
        except ImportError:
            raise ValueError(
                "`doctr` package not found, please install with "
                "`pip install git+https://github.com/h2oai/doctr.git`."
            )
        if self._ocr_model:
            self._ocr_model = self._ocr_model.to(self.device)
            return self
        self.set_context()
        self._ocr_model = ocr_predictor(det_arch="db_resnet50", reco_arch="crnn_efficientnetv2_mV2",
                                        pretrained=True).to(self.device)
        return self

    def unload_model(self):
        if self._ocr_model and hasattr(self._ocr_model.det_predictor.model, 'cpu'):
            self._ocr_model.det_predictor.model.cpu()
            clear_torch_cache()
        if self._ocr_model and hasattr(self._ocr_model.reco_predictor.model, 'cpu'):
            self._ocr_model.reco_predictor.model.cpu()
            clear_torch_cache()
        if self._ocr_model and hasattr(self._ocr_model, 'cpu'):
            self._ocr_model.cpu()
            clear_torch_cache()

    def set_document_paths(self, document_paths: Union[str, List[str]]):
        """
        Load from a list of image files
        """
        if isinstance(document_paths, str):
            self.document_paths = [document_paths]
        else:
            self.document_paths = document_paths

    def load(self, prompt=None) -> List[Document]:
        if self._ocr_model is None:
            self.load_model()
        context_class = torch.cuda.device(self.gpu_id) if 'cuda' in str(self.device) else NullContext
        results = []
        with context_class:
            for document_path in self.document_paths:
                caption, metadata = self._get_captions_and_metadata(
                    model=self._ocr_model, document_path=document_path
                )
                doc = Document(page_content=" \n".join(caption), metadata=metadata)
                results.append(doc)

        return results

    @staticmethod
    def pad_resize_image(image):
        import cv2

        L = 1024
        H = 1024

        # Load the image
        Li, Hi = image.shape[1], image.shape[0]

        # Calculate the aspect ratio
        aspect_ratio_original = Li / Hi
        aspect_ratio_final = L / H

        # Check the original size and determine the processing needed
        if Li < L and Hi < H:
            # Padding
            padding_x = (L - Li) // 2
            padding_y = (H - Hi) // 2
            image = cv2.copyMakeBorder(image, padding_y, padding_y, padding_x, padding_x, cv2.BORDER_CONSTANT, value=[0, 0, 0])
        elif Li > L and Hi > H:
            # Resizing
            if aspect_ratio_original < aspect_ratio_final:
                # The image is taller than the target aspect ratio
                new_height = H
                new_width = int(H * aspect_ratio_original)
            else:
                # The image is wider than the target aspect ratio
                new_width = L
                new_height = int(L / aspect_ratio_original)
            image = cv2.resize(image, (new_width, new_height), interpolation=cv2.INTER_AREA)
        else:
            # Intermediate case, resize without cropping
            if aspect_ratio_original < aspect_ratio_final:
                # The image is taller than the target aspect ratio
                new_height = H
                new_width = int(H * aspect_ratio_original)
            else:
                # The image is wider than the target aspect ratio
                new_width = L
                new_height = int(L / aspect_ratio_original)
            image = cv2.resize(image, (new_width, new_height), interpolation=cv2.INTER_AREA)
            padding_x = (L - new_width) // 2
            padding_y = (H - new_height) // 2
            image = cv2.copyMakeBorder(image, padding_y, padding_y, padding_x, padding_x, cv2.BORDER_CONSTANT, value=[0, 0, 0])
        return image

    def _get_captions_and_metadata(
            self, model: Any, document_path: str) -> Tuple[list, dict]:
        """
        Helper function for getting the captions and metadata of an image
        """
        try:
            from doctr.io import DocumentFile
        except ImportError:
            raise ValueError(
                "`doctr` package not found, please install with "
                "`pip install git+https://github.com/h2oai/doctr.git`."
            )
        try:
            if document_path.lower().endswith(".pdf"):
                # load at roughly 300 dpi
                images = read_pdf(document_path)
            else:
                images = DocumentFile.from_images(document_path)
        except Exception:
            raise ValueError(f"Could not get image data for {document_path}")
        document_words = []
        shapes = []
        for image in images:
            shape0 = str(image.shape)
            image = self.pad_resize_image(image)
            # debug, to see effect of pad-resize
            # import cv2
            # cv2.imwrite('new1.png', image)
            shape1 = str(image.shape)

            ocr_output = model([image])
            page_words = []
            page_boxes = []
            for block_num, block in enumerate(ocr_output.pages[0].blocks):
                for line_num, line in enumerate(block.lines):
                    for word_num, word in enumerate(line.words):
                        if not (word.value or "").strip():
                            continue
                        page_words.append(word.value)
                        page_boxes.append(
                            [word.geometry[0][0], word.geometry[0][1], word.geometry[1][0], word.geometry[1][1]])
            if self.layout_aware:
                ids = boxes_sort(page_boxes)
                texts = [page_words[i] for i in ids]
                text_boxes = [page_boxes[i] for i in ids]
                page_words = space_layout(texts=texts, boxes=text_boxes)
            else:
                page_words = " ".join(page_words)
            document_words.append(page_words)
            shapes.append(dict(shape0=shape0, shape1=shape1))
        metadata: dict = {"image_path": document_path, 'shape': str(shapes)}
        return document_words, metadata


def boxes_sort(boxes):
    """ From left top to right bottom
    Params:
        boxes: [[x1, y1, x2, y2], [x1, y1, x2, y2], ...]
    """
    sorted_id = sorted(range(len(boxes)), key=lambda x: (boxes[x][1]))

    # sorted_boxes = [boxes[id] for id in sorted_id]

    return sorted_id


def is_same_line(box1, box2):
    """
    Params:
        box1: [x1, y1, x2, y2]
        box2: [x1, y1, x2, y2]
    """

    box1_midy = (box1[1] + box1[3]) / 2
    box2_midy = (box2[1] + box2[3]) / 2

    if box1_midy < box2[3] and box1_midy > box2[1] and box2_midy < box1[3] and box2_midy > box1[1]:
        return True
    else:
        return False


def union_box(box1, box2):
    """
    Params:
        box1: [x1, y1, x2, y2]
        box2: [x1, y1, x2, y2]
    """
    x1 = min(box1[0], box2[0])
    y1 = min(box1[1], box2[1])
    x2 = max(box1[2], box2[2])
    y2 = max(box1[3], box2[3])

    return [x1, y1, x2, y2]


def space_layout(texts, boxes, threshold_show_spaces=8, threshold_char_width=0.02):
    line_boxes = []
    line_texts = []
    max_line_char_num = 0
    line_width = 0
    # print(f"len_boxes: {len(boxes)}")
    boxes = np.array(boxes)
    texts = np.array(texts)
    while len(boxes) > 0:
        box = boxes[0]
        mid = (boxes[:, 3] + boxes[:, 1]) / 2
        inline_boxes = np.logical_and(mid > box[1], mid < box[3])
        sorted_xs = np.argsort(boxes[inline_boxes][:, 0], axis=0)
        line_box = boxes[inline_boxes][sorted_xs]
        line_text = texts[inline_boxes][sorted_xs]
        boxes = boxes[~inline_boxes]
        texts = texts[~inline_boxes]

        line_boxes.append(line_box.tolist())
        line_texts.append(line_text.tolist())
        if len(" ".join(line_texts[-1])) > max_line_char_num:
            max_line_char_num = len(" ".join(line_texts[-1]))
            line_width = np.array(line_boxes[-1])
            line_width = line_width[:, 2].max() - line_width[:, 0].min()

    char_width = (line_width / max_line_char_num) if max_line_char_num > 0 else 0
    if threshold_char_width == 0.0:
        if char_width == 0:
            char_width = 1
    else:
        if char_width <= 0.02:
            char_width = 0.02

    space_line_texts = []
    for i, line_box in enumerate(line_boxes):
        space_line_text = ""
        for j, box in enumerate(line_box):
            left_char_num = int(box[0] / char_width)
            left_char_num = max((left_char_num - len(space_line_text)), 1)

            # verbose layout
            # space_line_text += " " * left_char_num

            # minified layout
            if left_char_num > threshold_show_spaces:
                space_line_text += f" <{left_char_num}> "
            else:
                space_line_text += " "

            space_line_text += line_texts[i][j]
        space_line_texts.append(space_line_text + "\n")

    return "".join(space_line_texts)


def read_pdf(
        file: AbstractFile,
        scale: float = 300 / 72,
        rgb_mode: bool = True,
        password: Optional[str] = None,
        **kwargs: Any,
) -> List[np.ndarray]:
    """Read a PDF file and convert it into an image in numpy format

    >>> from doctr.documents import read_pdf
    >>> doc = read_pdf("path/to/your/doc.pdf")

    Args:
        file: the path to the PDF file
        scale: rendering scale (1 corresponds to 72dpi)
        rgb_mode: if True, the output will be RGB, otherwise BGR
        password: a password to unlock the document, if encrypted
        kwargs: additional parameters to :meth:`pypdfium2.PdfPage.render`

    Returns:
        the list of pages decoded as numpy ndarray of shape H x W x C
    """

    # Rasterise pages to numpy ndarrays with pypdfium2
    import pypdfium2 as pdfium
    pdf = pdfium.PdfDocument(file, password=password, autoclose=True)
    return [page.render(scale=scale, rev_byteorder=rgb_mode, **kwargs).to_numpy() for page in pdf]