# Predicts pose + left/right hand + face landmarks. # # It is required that: # - "face_detection_short_range.tflite" is available at # "mediapipe/modules/face_detection/face_detection_short_range.tflite" # # - "face_landmark.tflite" is available at # "mediapipe/modules/face_landmark/face_landmark.tflite" # # - "hand_landmark_full.tflite" is available at # "mediapipe/modules/hand_landmark/hand_landmark_full.tflite" # # - "hand_recrop.tflite" is available at # "mediapipe/modules/holistic_landmark/hand_recrop.tflite" # # - "handedness.txt" is available at # "mediapipe/modules/hand_landmark/handedness.txt" # # - "pose_detection.tflite" is available at # "mediapipe/modules/pose_detection/pose_detection.tflite" # # - "pose_landmark_lite.tflite" or "pose_landmark_full.tflite" or # "pose_landmark_heavy.tflite" is available at # "mediapipe/modules/pose_landmark/pose_landmark_lite.tflite" or # "mediapipe/modules/pose_landmark/pose_landmark_full.tflite" or # "mediapipe/modules/pose_landmark/pose_landmark_heavy.tflite" # path respectively during execution, depending on the specification in the # MODEL_COMPLEXITY input side packet. # # EXAMPLE: # node { # calculator: "HolisticLandmarkCpu" # input_stream: "IMAGE:input_video" # input_side_packet: "MODEL_COMPLEXITY:model_complexity" # input_side_packet: "SMOOTH_LANDMARKS:smooth_landmarks" # input_side_packet: "ENABLE_SEGMENTATION:enable_segmentation" # input_side_packet: "SMOOTH_SEGMENTATION:smooth_segmentation" # input_side_packet: "REFINE_FACE_LANDMARKS:refine_face_landmarks" # input_side_packet: "USE_PREV_LANDMARKS:use_prev_landmarks" # output_stream: "POSE_LANDMARKS:pose_landmarks" # output_stream: "FACE_LANDMARKS:face_landmarks" # output_stream: "LEFT_HAND_LANDMARKS:left_hand_landmarks" # output_stream: "RIGHT_HAND_LANDMARKS:right_hand_landmarks" # } # # NOTE: if a pose/hand/face output is not present in the image, for this # particular timestamp there will not be an output packet in the corresponding # output stream below. However, the MediaPipe framework will internally inform # the downstream calculators of the absence of this packet so that they don't # wait for it unnecessarily. type: "HolisticLandmarkCpu" # CPU image. (ImageFrame) input_stream: "IMAGE:image" # Complexity of the pose landmark model: 0, 1 or 2. Landmark accuracy as well as # inference latency generally go up with the model complexity. If unspecified, # functions as set to 1. (int) input_side_packet: "MODEL_COMPLEXITY:model_complexity" # Whether to filter landmarks across different input images to reduce jitter. # If unspecified, functions as set to true. (bool) input_side_packet: "SMOOTH_LANDMARKS:smooth_landmarks" # Whether to predict the segmentation mask. If unspecified, functions as set to # false. (bool) input_side_packet: "ENABLE_SEGMENTATION:enable_segmentation" # Whether to filter segmentation mask across different input images to reduce # jitter. If unspecified, functions as set to true. (bool) input_side_packet: "SMOOTH_SEGMENTATION:smooth_segmentation" # Whether to run the face landmark model with attention on lips and eyes to # provide more accuracy, and additionally output iris landmarks. If unspecified, # functions as set to false. (bool) input_side_packet: "REFINE_FACE_LANDMARKS:refine_face_landmarks" # Whether landmarks on the previous image should be used to help localize # landmarks on the current image. (bool) input_side_packet: "USE_PREV_LANDMARKS:use_prev_landmarks" # Pose landmarks. (NormalizedLandmarkList) # 33 pose landmarks. output_stream: "POSE_LANDMARKS:pose_landmarks" # 33 pose world landmarks. (LandmarkList) output_stream: "WORLD_LANDMARKS:pose_world_landmarks" # 21 left hand landmarks. (NormalizedLandmarkList) output_stream: "LEFT_HAND_LANDMARKS:left_hand_landmarks" # 21 right hand landmarks. (NormalizedLandmarkList) output_stream: "RIGHT_HAND_LANDMARKS:right_hand_landmarks" # 468 face landmarks. (NormalizedLandmarkList) output_stream: "FACE_LANDMARKS:face_landmarks" # Segmentation mask. (ImageFrame in ImageFormat::VEC32F1) output_stream: "SEGMENTATION_MASK:segmentation_mask" # Debug outputs output_stream: "POSE_ROI:pose_landmarks_roi" output_stream: "POSE_DETECTION:pose_detection" # Predicts pose landmarks. node { calculator: "PoseLandmarkCpu" input_stream: "IMAGE:image" input_side_packet: "MODEL_COMPLEXITY:model_complexity" input_side_packet: "SMOOTH_LANDMARKS:smooth_landmarks" input_side_packet: "ENABLE_SEGMENTATION:enable_segmentation" input_side_packet: "SMOOTH_SEGMENTATION:smooth_segmentation" input_side_packet: "USE_PREV_LANDMARKS:use_prev_landmarks" output_stream: "LANDMARKS:pose_landmarks" output_stream: "WORLD_LANDMARKS:pose_world_landmarks" output_stream: "SEGMENTATION_MASK:segmentation_mask" output_stream: "ROI_FROM_LANDMARKS:pose_landmarks_roi" output_stream: "DETECTION:pose_detection" } # Predicts left and right hand landmarks based on the initial pose landmarks. node { calculator: "HandLandmarksLeftAndRightCpu" input_stream: "IMAGE:image" input_stream: "POSE_LANDMARKS:pose_landmarks" output_stream: "LEFT_HAND_LANDMARKS:left_hand_landmarks" output_stream: "RIGHT_HAND_LANDMARKS:right_hand_landmarks" } # Extracts face-related pose landmarks. node { calculator: "SplitNormalizedLandmarkListCalculator" input_stream: "pose_landmarks" output_stream: "face_landmarks_from_pose" options: { [mediapipe.SplitVectorCalculatorOptions.ext] { ranges: { begin: 0 end: 11 } } } } # Predicts face landmarks based on the initial pose landmarks. node { calculator: "FaceLandmarksFromPoseCpu" input_stream: "IMAGE:image" input_stream: "FACE_LANDMARKS_FROM_POSE:face_landmarks_from_pose" input_side_packet: "REFINE_LANDMARKS:refine_face_landmarks" output_stream: "FACE_LANDMARKS:face_landmarks" }