# Copyright (c) OpenMMLab. All rights reserved. import cv2 import numpy as np from .cv_ox_det import inference_detector from .cv_ox_pose import inference_pose from typing import List, Optional from .types import PoseResult, BodyResult, Keypoint class Wholebody: def __init__(self, onnx_det: str, onnx_pose: str): # Always loads to CPU to avoid building OpenCV. device = 'cpu' backend = cv2.dnn.DNN_BACKEND_OPENCV if device == 'cpu' else cv2.dnn.DNN_BACKEND_CUDA # You need to manually build OpenCV through cmake to work with your GPU. providers = cv2.dnn.DNN_TARGET_CPU if device == 'cpu' else cv2.dnn.DNN_TARGET_CUDA self.session_det = cv2.dnn.readNetFromONNX(onnx_det) self.session_det.setPreferableBackend(backend) self.session_det.setPreferableTarget(providers) self.session_pose = cv2.dnn.readNetFromONNX(onnx_pose) self.session_pose.setPreferableBackend(backend) self.session_pose.setPreferableTarget(providers) def __call__(self, oriImg) -> Optional[np.ndarray]: det_result = inference_detector(self.session_det, oriImg) if det_result is None: return None keypoints, scores = 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 return keypoints_info @staticmethod def format_result(keypoints_info: Optional[np.ndarray]) -> List[PoseResult]: def format_keypoint_part( part: np.ndarray, ) -> Optional[List[Optional[Keypoint]]]: keypoints = [ Keypoint(x, y, score, i) if score >= 0.3 else None for i, (x, y, score) in enumerate(part) ] return ( None if all(keypoint is None for keypoint in keypoints) else keypoints ) def total_score(keypoints: Optional[List[Optional[Keypoint]]]) -> float: return ( sum(keypoint.score for keypoint in keypoints if keypoint is not None) if keypoints is not None else 0.0 ) pose_results = [] if keypoints_info is None: return pose_results for instance in keypoints_info: body_keypoints = format_keypoint_part(instance[:18]) or ([None] * 18) left_hand = format_keypoint_part(instance[92:113]) right_hand = format_keypoint_part(instance[113:134]) face = format_keypoint_part(instance[24:92]) # Openpose face consists of 70 points in total, while DWPose only # provides 68 points. Padding the last 2 points. if face is not None: # left eye face.append(body_keypoints[14]) # right eye face.append(body_keypoints[15]) body = BodyResult( body_keypoints, total_score(body_keypoints), len(body_keypoints) ) pose_results.append(PoseResult(body, left_hand, right_hand, face)) return pose_results