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# https://github.com/IDEA-Research/DWPose
from pathlib import Path

import cv2
import numpy as np
import onnxruntime as ort

import os
import sys

from typing import List, Tuple

import cv2
import numpy as np
import onnxruntime as ort


ModelDataPathPrefix = Path("./pretrained_weights")

class Wholebody:
    # https://github.com/IDEA-Research/DWPose
    def nms(self, boxes, scores, nms_thr):
        """Single class NMS implemented in Numpy."""
        x1 = boxes[:, 0]
        y1 = boxes[:, 1]
        x2 = boxes[:, 2]
        y2 = boxes[:, 3]

        areas = (x2 - x1 + 1) * (y2 - y1 + 1)
        order = scores.argsort()[::-1]

        keep = []
        while order.size > 0:
            i = order[0]
            keep.append(i)
            xx1 = np.maximum(x1[i], x1[order[1:]])
            yy1 = np.maximum(y1[i], y1[order[1:]])
            xx2 = np.minimum(x2[i], x2[order[1:]])
            yy2 = np.minimum(y2[i], y2[order[1:]])

            w = np.maximum(0.0, xx2 - xx1 + 1)
            h = np.maximum(0.0, yy2 - yy1 + 1)
            inter = w * h
            ovr = inter / (areas[i] + areas[order[1:]] - inter)

            inds = np.where(ovr <= nms_thr)[0]
            order = order[inds + 1]

        return keep


    def multiclass_nms(self, boxes, scores, nms_thr, score_thr):
        """Multiclass NMS implemented in Numpy. Class-aware version."""
        final_dets = []
        num_classes = scores.shape[1]
        for cls_ind in range(num_classes):
            cls_scores = scores[:, cls_ind]
            valid_score_mask = cls_scores > score_thr
            if valid_score_mask.sum() == 0:
                continue
            else:
                valid_scores = cls_scores[valid_score_mask]
                valid_boxes = boxes[valid_score_mask]
                keep = self.nms(valid_boxes, valid_scores, nms_thr)
                if len(keep) > 0:
                    cls_inds = np.ones((len(keep), 1)) * cls_ind
                    dets = np.concatenate(
                        [valid_boxes[keep], valid_scores[keep, None], cls_inds], 1
                    )
                    final_dets.append(dets)
        if len(final_dets) == 0:
            return None
        return np.concatenate(final_dets, 0)


    def demo_postprocess(self, outputs, img_size, p6=False):
        grids = []
        expanded_strides = []
        strides = [8, 16, 32] if not p6 else [8, 16, 32, 64]

        hsizes = [img_size[0] // stride for stride in strides]
        wsizes = [img_size[1] // stride for stride in strides]

        for hsize, wsize, stride in zip(hsizes, wsizes, strides):
            xv, yv = np.meshgrid(np.arange(wsize), np.arange(hsize))
            grid = np.stack((xv, yv), 2).reshape(1, -1, 2)
            grids.append(grid)
            shape = grid.shape[:2]
            expanded_strides.append(np.full((*shape, 1), stride))

        grids = np.concatenate(grids, 1)
        expanded_strides = np.concatenate(expanded_strides, 1)
        outputs[..., :2] = (outputs[..., :2] + grids) * expanded_strides
        outputs[..., 2:4] = np.exp(outputs[..., 2:4]) * expanded_strides

        return outputs


    def det_preprocess(self, img, input_size, swap=(2, 0, 1)):
        if len(img.shape) == 3:
            padded_img = np.ones((input_size[0], input_size[1], 3), dtype=np.uint8) * 114
        else:
            padded_img = np.ones(input_size, dtype=np.uint8) * 114

        r = min(input_size[0] / img.shape[0], input_size[1] / img.shape[1])
        resized_img = cv2.resize(
            img,
            (int(img.shape[1] * r), int(img.shape[0] * r)),
            interpolation=cv2.INTER_LINEAR,
        ).astype(np.uint8)
        padded_img[: int(img.shape[0] * r), : int(img.shape[1] * r)] = resized_img

        padded_img = padded_img.transpose(swap)
        padded_img = np.ascontiguousarray(padded_img, dtype=np.float32)
        return padded_img, r


    def inference_detector(self, session, oriImg):
        input_shape = (640, 640)
        img, ratio = self.det_preprocess(oriImg, input_shape)

        ort_inputs = {session.get_inputs()[0].name: img[None, :, :, :]}
        output = session.run(None, ort_inputs)
        predictions = self.demo_postprocess(output[0], input_shape)[0]

        boxes = predictions[:, :4]
        scores = predictions[:, 4:5] * predictions[:, 5:]

        boxes_xyxy = np.ones_like(boxes)
        boxes_xyxy[:, 0] = boxes[:, 0] - boxes[:, 2] / 2.0
        boxes_xyxy[:, 1] = boxes[:, 1] - boxes[:, 3] / 2.0
        boxes_xyxy[:, 2] = boxes[:, 0] + boxes[:, 2] / 2.0
        boxes_xyxy[:, 3] = boxes[:, 1] + boxes[:, 3] / 2.0
        boxes_xyxy /= ratio
        dets = self.multiclass_nms(boxes_xyxy, scores, nms_thr=0.45, score_thr=0.1)
        if dets is not None:
            final_boxes, final_scores, final_cls_inds = dets[:, :4], dets[:, 4], dets[:, 5]
            isscore = final_scores > 0.3
            iscat = final_cls_inds == 0
            isbbox = [i and j for (i, j) in zip(isscore, iscat)]
            final_boxes = final_boxes[isbbox]
        else:
            return []

        return final_boxes

    def pose_preprocess(self, img: np.ndarray, out_bbox, input_size: Tuple[int, int] = (192, 256)) -> Tuple[np.ndarray, np.ndarray, np.ndarray]:
        """Do preprocessing for RTMPose model inference.

        Args:
            img (np.ndarray): Input image in shape.
            input_size (tuple): Input image size in shape (w, h).

        Returns:
            tuple:
            - resized_img (np.ndarray): Preprocessed image.
            - center (np.ndarray): Center of image.
            - scale (np.ndarray): Scale of image.
        """
        # get shape of image
        img_shape = img.shape[:2]
        out_img, out_center, out_scale = [], [], []
        if len(out_bbox) == 0:
            out_bbox = [[0, 0, img_shape[1], img_shape[0]]]
        for i in range(len(out_bbox)):
            x0 = out_bbox[i][0]
            y0 = out_bbox[i][1]
            x1 = out_bbox[i][2]
            y1 = out_bbox[i][3]
            bbox = np.array([x0, y0, x1, y1])

            # get center and scale
            center, scale = self.bbox_xyxy2cs(bbox, padding=1.25)

            # do affine transformation
            resized_img, scale = self.top_down_affine(input_size, scale, center, img)

            # normalize image
            mean = np.array([123.675, 116.28, 103.53])
            std = np.array([58.395, 57.12, 57.375])
            resized_img = (resized_img - mean) / std

            out_img.append(resized_img)
            out_center.append(center)
            out_scale.append(scale)

        return out_img, out_center, out_scale


    def inference(self, sess: ort.InferenceSession, img: np.ndarray) -> np.ndarray:
        """Inference RTMPose model.

        Args:
            sess (ort.InferenceSession): ONNXRuntime session.
            img (np.ndarray): Input image in shape.

        Returns:
            outputs (np.ndarray): Output of RTMPose model.
        """
        all_out = []
        # build input
        for i in range(len(img)):
            input = [img[i].transpose(2, 0, 1)]

            # build output
            sess_input = {sess.get_inputs()[0].name: input}
            sess_output = []
            for out in sess.get_outputs():
                sess_output.append(out.name)

            # run model
            outputs = sess.run(sess_output, sess_input)
            all_out.append(outputs)

        return all_out


    def postprocess(
        self,
        outputs: List[np.ndarray],
        model_input_size: Tuple[int, int],
        center: Tuple[int, int],
        scale: Tuple[int, int],
        simcc_split_ratio: float = 2.0,
    ) -> Tuple[np.ndarray, np.ndarray]:
        """Postprocess for RTMPose model output.

        Args:
            outputs (np.ndarray): Output of RTMPose model.
            model_input_size (tuple): RTMPose model Input image size.
            center (tuple): Center of bbox in shape (x, y).
            scale (tuple): Scale of bbox in shape (w, h).
            simcc_split_ratio (float): Split ratio of simcc.

        Returns:
            tuple:
            - keypoints (np.ndarray): Rescaled keypoints.
            - scores (np.ndarray): Model predict scores.
        """
        all_key = []
        all_score = []
        for i in range(len(outputs)):
            # use simcc to decode
            simcc_x, simcc_y = outputs[i]
            keypoints, scores = self.decode(simcc_x, simcc_y, simcc_split_ratio)

            # rescale keypoints
            keypoints = keypoints / model_input_size * scale[i] + center[i] - scale[i] / 2
            all_key.append(keypoints[0])
            all_score.append(scores[0])

        return np.array(all_key), np.array(all_score)


    def bbox_xyxy2cs(
        self,
        bbox: np.ndarray, padding: float = 1.0
    ) -> Tuple[np.ndarray, np.ndarray]:
        """Transform the bbox format from (x,y,w,h) into (center, scale)

        Args:
            bbox (ndarray): Bounding box(es) in shape (4,) or (n, 4), formatted
                as (left, top, right, bottom)
            padding (float): BBox padding factor that will be multilied to scale.
                Default: 1.0

        Returns:
            tuple: A tuple containing center and scale.
            - np.ndarray[float32]: Center (x, y) of the bbox in shape (2,) or
                (n, 2)
            - np.ndarray[float32]: Scale (w, h) of the bbox in shape (2,) or
                (n, 2)
        """
        # convert single bbox from (4, ) to (1, 4)
        dim = bbox.ndim
        if dim == 1:
            bbox = bbox[None, :]

        # get bbox center and scale
        x1, y1, x2, y2 = np.hsplit(bbox, [1, 2, 3])
        center = np.hstack([x1 + x2, y1 + y2]) * 0.5
        scale = np.hstack([x2 - x1, y2 - y1]) * padding

        if dim == 1:
            center = center[0]
            scale = scale[0]

        return center, scale


    def _fix_aspect_ratio(self, bbox_scale: np.ndarray, aspect_ratio: float) -> np.ndarray:
        """Extend the scale to match the given aspect ratio.

        Args:
            scale (np.ndarray): The image scale (w, h) in shape (2, )
            aspect_ratio (float): The ratio of ``w/h``

        Returns:
            np.ndarray: The reshaped image scale in (2, )
        """
        w, h = np.hsplit(bbox_scale, [1])
        bbox_scale = np.where(
            w > h * aspect_ratio,
            np.hstack([w, w / aspect_ratio]),
            np.hstack([h * aspect_ratio, h]),
        )
        return bbox_scale


    def _rotate_point(self, pt: np.ndarray, angle_rad: float) -> np.ndarray:
        """Rotate a point by an angle.

        Args:
            pt (np.ndarray): 2D point coordinates (x, y) in shape (2, )
            angle_rad (float): rotation angle in radian

        Returns:
            np.ndarray: Rotated point in shape (2, )
        """
        sn, cs = np.sin(angle_rad), np.cos(angle_rad)
        rot_mat = np.array([[cs, -sn], [sn, cs]])
        return rot_mat @ pt


    def _get_3rd_point(self, a: np.ndarray, b: np.ndarray) -> np.ndarray:
        """To calculate the affine matrix, three pairs of points are required. This
        function is used to get the 3rd point, given 2D points a & b.

        The 3rd point is defined by rotating vector `a - b` by 90 degrees
        anticlockwise, using b as the rotation center.

        Args:
            a (np.ndarray): The 1st point (x,y) in shape (2, )
            b (np.ndarray): The 2nd point (x,y) in shape (2, )

        Returns:
            np.ndarray: The 3rd point.
        """
        direction = a - b
        c = b + np.r_[-direction[1], direction[0]]
        return c


    def get_warp_matrix(
        self,
        center: np.ndarray,
        scale: np.ndarray,
        rot: float,
        output_size: Tuple[int, int],
        shift: Tuple[float, float] = (0.0, 0.0),
        inv: bool = False,
    ) -> np.ndarray:
        """Calculate the affine transformation matrix that can warp the bbox area
        in the input image to the output size.

        Args:
            center (np.ndarray[2, ]): Center of the bounding box (x, y).
            scale (np.ndarray[2, ]): Scale of the bounding box
                wrt [width, height].
            rot (float): Rotation angle (degree).
            output_size (np.ndarray[2, ] | list(2,)): Size of the
                destination heatmaps.
            shift (0-100%): Shift translation ratio wrt the width/height.
                Default (0., 0.).
            inv (bool): Option to inverse the affine transform direction.
                (inv=False: src->dst or inv=True: dst->src)

        Returns:
            np.ndarray: A 2x3 transformation matrix
        """
        shift = np.array(shift)
        src_w = scale[0]
        dst_w = output_size[0]
        dst_h = output_size[1]

        # compute transformation matrix
        rot_rad = np.deg2rad(rot)
        src_dir = self._rotate_point(np.array([0.0, src_w * -0.5]), rot_rad)
        dst_dir = np.array([0.0, dst_w * -0.5])

        # get four corners of the src rectangle in the original image
        src = np.zeros((3, 2), dtype=np.float32)
        src[0, :] = center + scale * shift
        src[1, :] = center + src_dir + scale * shift
        src[2, :] = self._get_3rd_point(src[0, :], src[1, :])

        # get four corners of the dst rectangle in the input image
        dst = np.zeros((3, 2), dtype=np.float32)
        dst[0, :] = [dst_w * 0.5, dst_h * 0.5]
        dst[1, :] = np.array([dst_w * 0.5, dst_h * 0.5]) + dst_dir
        dst[2, :] = self._get_3rd_point(dst[0, :], dst[1, :])

        if inv:
            warp_mat = cv2.getAffineTransform(np.float32(dst), np.float32(src))
        else:
            warp_mat = cv2.getAffineTransform(np.float32(src), np.float32(dst))

        return warp_mat


    def top_down_affine(
        self, input_size: dict, bbox_scale: dict, bbox_center: dict, img: np.ndarray
    ) -> Tuple[np.ndarray, np.ndarray]:
        """Get the bbox image as the model input by affine transform.

        Args:
            input_size (dict): The input size of the model.
            bbox_scale (dict): The bbox scale of the img.
            bbox_center (dict): The bbox center of the img.
            img (np.ndarray): The original image.

        Returns:
            tuple: A tuple containing center and scale.
            - np.ndarray[float32]: img after affine transform.
            - np.ndarray[float32]: bbox scale after affine transform.
        """
        w, h = input_size
        warp_size = (int(w), int(h))

        # reshape bbox to fixed aspect ratio
        bbox_scale = self._fix_aspect_ratio(bbox_scale, aspect_ratio=w / h)

        # get the affine matrix
        center = bbox_center
        scale = bbox_scale
        rot = 0
        warp_mat = self.get_warp_matrix(center, scale, rot, output_size=(w, h))

        # do affine transform
        img = cv2.warpAffine(img, warp_mat, warp_size, flags=cv2.INTER_LINEAR)

        return img, bbox_scale


    def get_simcc_maximum(
        self, simcc_x: np.ndarray, simcc_y: np.ndarray
    ) -> Tuple[np.ndarray, np.ndarray]:
        """Get maximum response location and value from simcc representations.

        Note:
            instance number: N
            num_keypoints: K
            heatmap height: H
            heatmap width: W

        Args:
            simcc_x (np.ndarray): x-axis SimCC in shape (K, Wx) or (N, K, Wx)
            simcc_y (np.ndarray): y-axis SimCC in shape (K, Wy) or (N, K, Wy)

        Returns:
            tuple:
            - locs (np.ndarray): locations of maximum heatmap responses in shape
                (K, 2) or (N, K, 2)
            - vals (np.ndarray): values of maximum heatmap responses in shape
                (K,) or (N, K)
        """
        N, K, Wx = simcc_x.shape
        simcc_x = simcc_x.reshape(N * K, -1)
        simcc_y = simcc_y.reshape(N * K, -1)

        # get maximum value locations
        x_locs = np.argmax(simcc_x, axis=1)
        y_locs = np.argmax(simcc_y, axis=1)
        locs = np.stack((x_locs, y_locs), axis=-1).astype(np.float32)
        max_val_x = np.amax(simcc_x, axis=1)
        max_val_y = np.amax(simcc_y, axis=1)

        # get maximum value across x and y axis
        mask = max_val_x > max_val_y
        max_val_x[mask] = max_val_y[mask]
        vals = max_val_x
        locs[vals <= 0.0] = -1

        # reshape
        locs = locs.reshape(N, K, 2)
        vals = vals.reshape(N, K)

        return locs, vals


    def decode(
        self, simcc_x: np.ndarray, simcc_y: np.ndarray, simcc_split_ratio
    ) -> Tuple[np.ndarray, np.ndarray]:
        """Modulate simcc distribution with Gaussian.

        Args:
            simcc_x (np.ndarray[K, Wx]): model predicted simcc in x.
            simcc_y (np.ndarray[K, Wy]): model predicted simcc in y.
            simcc_split_ratio (int): The split ratio of simcc.

        Returns:
            tuple: A tuple containing center and scale.
            - np.ndarray[float32]: keypoints in shape (K, 2) or (n, K, 2)
            - np.ndarray[float32]: scores in shape (K,) or (n, K)
        """
        keypoints, scores = self.get_simcc_maximum(simcc_x, simcc_y)
        keypoints /= simcc_split_ratio

        return keypoints, scores


    def inference_pose(self, session, out_bbox, oriImg):
        h, w = session.get_inputs()[0].shape[2:]
        model_input_size = (w, h)
        resized_img, center, scale = self.pose_preprocess(oriImg, out_bbox, model_input_size)
        outputs = self.inference(session, resized_img)
        keypoints, scores = self.postprocess(outputs, model_input_size, center, scale)

        return keypoints, scores


    def __init__(self, device="cuda:0"):
        providers = (
            ["CPUExecutionProvider"] if device == "cpu" else ["CUDAExecutionProvider"]
        )

        base_dir = os.path.dirname(os.path.dirname(os.path.dirname(os.path.abspath(__file__))))

        # Construct absolute paths for the ONNX files
        onnx_det = os.path.abspath(os.path.join(base_dir, "pretrained_weights", "DWPose", "yolox_l.onnx"))
        onnx_pose = os.path.abspath(os.path.join(base_dir, "pretrained_weights", "DWPose", "dw-ll_ucoco_384.onnx"))

        self.session_det = ort.InferenceSession(
            path_or_bytes=onnx_det, providers=providers
        )
        self.session_pose = ort.InferenceSession(
            path_or_bytes=onnx_pose, providers=providers
        )

    def __call__(self, oriImg):
        det_result = self.inference_detector(self.session_det, oriImg)
        keypoints, scores = self.inference_pose(self.session_pose, det_result, oriImg)

        keypoints_info = np.concatenate((keypoints, scores[..., None]), axis=-1)
        # compute neck joint
        neck = np.mean(keypoints_info[:, [5, 6]], axis=1)
        # neck score when visualizing pred
        neck[:, 2:4] = np.logical_and(
            keypoints_info[:, 5, 2:4] > 0.3, keypoints_info[:, 6, 2:4] > 0.3
        ).astype(int)
        new_keypoints_info = np.insert(keypoints_info, 17, neck, axis=1)
        mmpose_idx = [17, 6, 8, 10, 7, 9, 12, 14, 16, 13, 15, 2, 1, 4, 3]
        openpose_idx = [1, 2, 3, 4, 6, 7, 8, 9, 10, 12, 13, 14, 15, 16, 17]
        new_keypoints_info[:, openpose_idx] = new_keypoints_info[:, mmpose_idx]
        keypoints_info = new_keypoints_info

        keypoints, scores = keypoints_info[..., :2], keypoints_info[..., 2]

        return keypoints, scores