248 lines
8.9 KiB
Plaintext
248 lines
8.9 KiB
Plaintext
# MediaPipe graph to detect/predict face landmarks. (CPU input, and inference is
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# executed on CPU.) This graph tries to skip face detection as much as possible
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# by using previously detected/predicted landmarks for new images.
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#
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# It is required that "face_detection_short_range.tflite" is available at
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# "mediapipe/modules/face_detection/face_detection_short_range.tflite"
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# path during execution.
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#
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# It is required that "face_landmark.tflite" is available at
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# "mediapipe/modules/face_landmark/face_landmark.tflite"
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# path during execution if `with_attention` is not set or set to `false`.
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#
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# It is required that "face_landmark_with_attention.tflite" is available at
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# "mediapipe/modules/face_landmark/face_landmark_with_attention.tflite"
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# path during execution if `with_attention` is set to `true`.
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#
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# EXAMPLE:
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# node {
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# calculator: "FaceLandmarkFrontCpu"
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# input_stream: "IMAGE:image"
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# input_side_packet: "NUM_FACES:num_faces"
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# input_side_packet: "USE_PREV_LANDMARKS:use_prev_landmarks"
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# input_side_packet: "WITH_ATTENTION:with_attention"
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# output_stream: "LANDMARKS:multi_face_landmarks"
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# }
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type: "FaceLandmarkFrontCpu"
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# CPU image. (ImageFrame)
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input_stream: "IMAGE:image"
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# Max number of faces to detect/track. (int)
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input_side_packet: "NUM_FACES:num_faces"
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# Whether landmarks on the previous image should be used to help localize
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# landmarks on the current image. (bool)
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input_side_packet: "USE_PREV_LANDMARKS:use_prev_landmarks"
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# Whether to run face mesh model with attention on lips and eyes. (bool)
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# Attention provides more accuracy on lips and eye regions as well as iris
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# landmarks.
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input_side_packet: "WITH_ATTENTION:with_attention"
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# Collection of detected/predicted faces, each represented as a list of 468 face
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# landmarks. (std::vector<NormalizedLandmarkList>)
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# NOTE: there will not be an output packet in the LANDMARKS stream for this
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# particular timestamp if none of faces detected. However, the MediaPipe
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# framework will internally inform the downstream calculators of the absence of
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# this packet so that they don't wait for it unnecessarily.
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output_stream: "LANDMARKS:multi_face_landmarks"
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# Extra outputs (for debugging, for instance).
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# Detected faces. (std::vector<Detection>)
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output_stream: "DETECTIONS:face_detections"
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# Regions of interest calculated based on landmarks.
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# (std::vector<NormalizedRect>)
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output_stream: "ROIS_FROM_LANDMARKS:face_rects_from_landmarks"
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# Regions of interest calculated based on face detections.
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# (std::vector<NormalizedRect>)
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output_stream: "ROIS_FROM_DETECTIONS:face_rects_from_detections"
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# When the optional input side packet "use_prev_landmarks" is either absent or
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# set to true, uses the landmarks on the previous image to help localize
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# landmarks on the current image.
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node {
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calculator: "GateCalculator"
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input_side_packet: "ALLOW:use_prev_landmarks"
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input_stream: "prev_face_rects_from_landmarks"
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output_stream: "gated_prev_face_rects_from_landmarks"
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options: {
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[mediapipe.GateCalculatorOptions.ext] {
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allow: true
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}
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}
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}
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# Determines if an input vector of NormalizedRect has a size greater than or
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# equal to the provided num_faces.
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node {
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calculator: "NormalizedRectVectorHasMinSizeCalculator"
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input_stream: "ITERABLE:gated_prev_face_rects_from_landmarks"
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input_side_packet: "num_faces"
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output_stream: "prev_has_enough_faces"
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}
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# Drops the incoming image if enough faces have already been identified from the
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# previous image. Otherwise, passes the incoming image through to trigger a new
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# round of face detection.
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node {
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calculator: "GateCalculator"
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input_stream: "image"
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input_stream: "DISALLOW:prev_has_enough_faces"
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output_stream: "gated_image"
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options: {
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[mediapipe.GateCalculatorOptions.ext] {
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empty_packets_as_allow: true
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}
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}
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}
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# Detects faces.
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node {
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calculator: "FaceDetectionShortRangeCpu"
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input_stream: "IMAGE:gated_image"
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output_stream: "DETECTIONS:all_face_detections"
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}
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# Makes sure there are no more detections than the provided num_faces.
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node {
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calculator: "ClipDetectionVectorSizeCalculator"
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input_stream: "all_face_detections"
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output_stream: "face_detections"
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input_side_packet: "num_faces"
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}
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# Calculate size of the image.
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node {
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calculator: "ImagePropertiesCalculator"
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input_stream: "IMAGE:gated_image"
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output_stream: "SIZE:gated_image_size"
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}
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# Outputs each element of face_detections at a fake timestamp for the rest of
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# the graph to process. Clones the image size packet for each face_detection at
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# the fake timestamp. At the end of the loop, outputs the BATCH_END timestamp
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# for downstream calculators to inform them that all elements in the vector have
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# been processed.
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node {
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calculator: "BeginLoopDetectionCalculator"
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input_stream: "ITERABLE:face_detections"
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input_stream: "CLONE:gated_image_size"
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output_stream: "ITEM:face_detection"
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output_stream: "CLONE:detections_loop_image_size"
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output_stream: "BATCH_END:detections_loop_end_timestamp"
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}
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# Calculates region of interest based on face detections, so that can be used
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# to detect landmarks.
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node {
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calculator: "FaceDetectionFrontDetectionToRoi"
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input_stream: "DETECTION:face_detection"
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input_stream: "IMAGE_SIZE:detections_loop_image_size"
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output_stream: "ROI:face_rect_from_detection"
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}
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# Collects a NormalizedRect for each face into a vector. Upon receiving the
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# BATCH_END timestamp, outputs the vector of NormalizedRect at the BATCH_END
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# timestamp.
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node {
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calculator: "EndLoopNormalizedRectCalculator"
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input_stream: "ITEM:face_rect_from_detection"
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input_stream: "BATCH_END:detections_loop_end_timestamp"
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output_stream: "ITERABLE:face_rects_from_detections"
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}
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# Performs association between NormalizedRect vector elements from previous
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# image and rects based on face detections from the current image. This
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# calculator ensures that the output face_rects vector doesn't contain
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# overlapping regions based on the specified min_similarity_threshold.
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node {
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calculator: "AssociationNormRectCalculator"
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input_stream: "face_rects_from_detections"
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input_stream: "gated_prev_face_rects_from_landmarks"
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output_stream: "face_rects"
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options: {
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[mediapipe.AssociationCalculatorOptions.ext] {
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min_similarity_threshold: 0.5
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}
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}
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}
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# Calculate size of the image.
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node {
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calculator: "ImagePropertiesCalculator"
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input_stream: "IMAGE:image"
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output_stream: "SIZE:image_size"
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}
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# Outputs each element of face_rects at a fake timestamp for the rest of the
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# graph to process. Clones image and image size packets for each
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# single_face_rect at the fake timestamp. At the end of the loop, outputs the
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# BATCH_END timestamp for downstream calculators to inform them that all
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# elements in the vector have been processed.
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node {
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calculator: "BeginLoopNormalizedRectCalculator"
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input_stream: "ITERABLE:face_rects"
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input_stream: "CLONE:0:image"
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input_stream: "CLONE:1:image_size"
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output_stream: "ITEM:face_rect"
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output_stream: "CLONE:0:landmarks_loop_image"
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output_stream: "CLONE:1:landmarks_loop_image_size"
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output_stream: "BATCH_END:landmarks_loop_end_timestamp"
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}
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# Detects face landmarks within specified region of interest of the image.
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node {
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calculator: "FaceLandmarkCpu"
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input_stream: "IMAGE:landmarks_loop_image"
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input_stream: "ROI:face_rect"
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input_side_packet: "WITH_ATTENTION:with_attention"
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output_stream: "LANDMARKS:face_landmarks"
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}
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# Calculates region of interest based on face landmarks, so that can be reused
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# for subsequent image.
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node {
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calculator: "FaceLandmarkLandmarksToRoi"
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input_stream: "LANDMARKS:face_landmarks"
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input_stream: "IMAGE_SIZE:landmarks_loop_image_size"
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output_stream: "ROI:face_rect_from_landmarks"
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}
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# Collects a set of landmarks for each face into a vector. Upon receiving the
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# BATCH_END timestamp, outputs the vector of landmarks at the BATCH_END
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# timestamp.
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node {
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calculator: "EndLoopNormalizedLandmarkListVectorCalculator"
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input_stream: "ITEM:face_landmarks"
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input_stream: "BATCH_END:landmarks_loop_end_timestamp"
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output_stream: "ITERABLE:multi_face_landmarks"
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}
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# Collects a NormalizedRect for each face into a vector. Upon receiving the
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# BATCH_END timestamp, outputs the vector of NormalizedRect at the BATCH_END
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# timestamp.
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node {
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calculator: "EndLoopNormalizedRectCalculator"
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input_stream: "ITEM:face_rect_from_landmarks"
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input_stream: "BATCH_END:landmarks_loop_end_timestamp"
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output_stream: "ITERABLE:face_rects_from_landmarks"
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}
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# Caches face rects calculated from landmarks, and upon the arrival of the next
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# input image, sends out the cached rects with timestamps replaced by that of
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# the input image, essentially generating a packet that carries the previous
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# face rects. Note that upon the arrival of the very first input image, a
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# timestamp bound update occurs to jump start the feedback loop.
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node {
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calculator: "PreviousLoopbackCalculator"
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input_stream: "MAIN:image"
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input_stream: "LOOP:face_rects_from_landmarks"
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input_stream_info: {
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tag_index: "LOOP"
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back_edge: true
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}
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output_stream: "PREV_LOOP:prev_face_rects_from_landmarks"
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}
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