b133b0f200
GitOrigin-RevId: afeb9cf5a8c069c0a566d16e1622bbb086170e4d
185 lines
6.0 KiB
Plaintext
185 lines
6.0 KiB
Plaintext
# MediaPipe graph that performs face detection with TensorFlow Lite on CPU.
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# Used in the examples in
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# mediapipe/examples/desktop/face_detection:face_detection_cpu.
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# Images on GPU coming into and out of the graph.
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input_stream: "input_video"
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output_stream: "output_video"
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# Throttles the images flowing downstream for flow control. It passes through
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# the very first incoming image unaltered, and waits for
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# TfLiteTensorsToDetectionsCalculator downstream in the graph to finish
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# generating the corresponding detections before it passes through another
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# image. All images that come in while waiting are dropped, limiting the number
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# of in-flight images between this calculator and
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# TfLiteTensorsToDetectionsCalculator to 1. This prevents the nodes in between
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# from queuing up incoming images and data excessively, which leads to increased
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# latency and memory usage, unwanted in real-time mobile applications. It also
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# eliminates unnecessarily computation, e.g., a transformed image produced by
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# ImageTransformationCalculator may get dropped downstream if the subsequent
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# TfLiteConverterCalculator or TfLiteInferenceCalculator is still busy
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# processing previous inputs.
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node {
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calculator: "FlowLimiterCalculator"
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input_stream: "input_video"
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input_stream: "FINISHED:detections"
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input_stream_info: {
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tag_index: "FINISHED"
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back_edge: true
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}
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output_stream: "throttled_input_video"
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}
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# Transforms the input image on CPU to a 128x128 image. To scale the input
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# image, the scale_mode option is set to FIT to preserve the aspect ratio,
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# resulting in potential letterboxing in the transformed image.
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node: {
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calculator: "ImageTransformationCalculator"
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input_stream: "IMAGE:throttled_input_video"
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output_stream: "IMAGE:transformed_input_video_cpu"
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output_stream: "LETTERBOX_PADDING:letterbox_padding"
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node_options: {
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[type.googleapis.com/mediapipe.ImageTransformationCalculatorOptions] {
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output_width: 128
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output_height: 128
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scale_mode: FIT
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}
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}
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}
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# Converts the transformed input image on CPU into an image tensor stored as a
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# TfLiteTensor.
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node {
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calculator: "TfLiteConverterCalculator"
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input_stream: "IMAGE:transformed_input_video_cpu"
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output_stream: "TENSORS:image_tensor"
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}
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# Runs a TensorFlow Lite model on CPU that takes an image tensor and outputs a
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# vector of tensors representing, for instance, detection boxes/keypoints and
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# scores.
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node {
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calculator: "TfLiteInferenceCalculator"
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input_stream: "TENSORS:image_tensor"
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output_stream: "TENSORS:detection_tensors"
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node_options: {
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[type.googleapis.com/mediapipe.TfLiteInferenceCalculatorOptions] {
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model_path: "mediapipe/models/face_detection_front.tflite"
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}
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}
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}
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# Generates a single side packet containing a vector of SSD anchors based on
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# the specification in the options.
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node {
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calculator: "SsdAnchorsCalculator"
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output_side_packet: "anchors"
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node_options: {
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[type.googleapis.com/mediapipe.SsdAnchorsCalculatorOptions] {
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num_layers: 4
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min_scale: 0.1484375
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max_scale: 0.75
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input_size_height: 128
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input_size_width: 128
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anchor_offset_x: 0.5
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anchor_offset_y: 0.5
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strides: 8
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strides: 16
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strides: 16
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strides: 16
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aspect_ratios: 1.0
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fixed_anchor_size: true
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}
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}
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}
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# Decodes the detection tensors generated by the TensorFlow Lite model, based on
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# the SSD anchors and the specification in the options, into a vector of
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# detections. Each detection describes a detected object.
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node {
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calculator: "TfLiteTensorsToDetectionsCalculator"
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input_stream: "TENSORS:detection_tensors"
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input_side_packet: "ANCHORS:anchors"
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output_stream: "DETECTIONS:detections"
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node_options: {
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[type.googleapis.com/mediapipe.TfLiteTensorsToDetectionsCalculatorOptions] {
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num_classes: 1
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num_boxes: 896
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num_coords: 16
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box_coord_offset: 0
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keypoint_coord_offset: 4
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num_keypoints: 6
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num_values_per_keypoint: 2
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sigmoid_score: true
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score_clipping_thresh: 100.0
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reverse_output_order: true
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x_scale: 128.0
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y_scale: 128.0
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h_scale: 128.0
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w_scale: 128.0
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min_score_thresh: 0.5
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}
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}
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}
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# Performs non-max suppression to remove excessive detections.
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node {
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calculator: "NonMaxSuppressionCalculator"
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input_stream: "detections"
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output_stream: "filtered_detections"
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node_options: {
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[type.googleapis.com/mediapipe.NonMaxSuppressionCalculatorOptions] {
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min_suppression_threshold: 0.3
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overlap_type: INTERSECTION_OVER_UNION
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algorithm: WEIGHTED
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return_empty_detections: true
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}
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}
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}
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# Maps detection label IDs to the corresponding label text ("Face"). The label
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# map is provided in the label_map_path option.
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node {
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calculator: "DetectionLabelIdToTextCalculator"
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input_stream: "filtered_detections"
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output_stream: "labeled_detections"
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node_options: {
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[type.googleapis.com/mediapipe.DetectionLabelIdToTextCalculatorOptions] {
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label_map_path: "mediapipe/models/face_detection_front_labelmap.txt"
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}
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}
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}
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# Adjusts detection locations (already normalized to [0.f, 1.f]) on the
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# letterboxed image (after image transformation with the FIT scale mode) to the
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# corresponding locations on the same image with the letterbox removed (the
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# input image to the graph before image transformation).
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node {
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calculator: "DetectionLetterboxRemovalCalculator"
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input_stream: "DETECTIONS:labeled_detections"
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input_stream: "LETTERBOX_PADDING:letterbox_padding"
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output_stream: "DETECTIONS:output_detections"
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}
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# Converts the detections to drawing primitives for annotation overlay.
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node {
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calculator: "DetectionsToRenderDataCalculator"
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input_stream: "DETECTIONS:output_detections"
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output_stream: "RENDER_DATA:render_data"
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node_options: {
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[type.googleapis.com/mediapipe.DetectionsToRenderDataCalculatorOptions] {
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thickness: 4.0
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color { r: 255 g: 0 b: 0 }
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}
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}
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}
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# Draws annotations and overlays them on top of the input images.
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node {
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calculator: "AnnotationOverlayCalculator"
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input_stream: "IMAGE:throttled_input_video"
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input_stream: "render_data"
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output_stream: "IMAGE:output_video"
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}
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