153 lines
5.5 KiB
Plaintext
153 lines
5.5 KiB
Plaintext
|
# MediaPipe graph that performs hair segmentation with TensorFlow Lite on CPU.
|
||
|
# Used in the example in
|
||
|
# mediapipie/examples/desktop/hair_segmentation:hair_segmentation_cpu
|
||
|
|
||
|
# Images on CPU coming into and out of the graph.
|
||
|
input_stream: "input_video"
|
||
|
output_stream: "output_video"
|
||
|
|
||
|
# Throttles the images flowing downstream for flow control. It passes through
|
||
|
# the very first incoming image unaltered, and waits for
|
||
|
# TfLiteTensorsToSegmentationCalculator downstream in the graph to finish
|
||
|
# generating the corresponding hair mask before it passes through another
|
||
|
# image. All images that come in while waiting are dropped, limiting the number
|
||
|
# of in-flight images between this calculator and
|
||
|
# TfLiteTensorsToSegmentationCalculator to 1. This prevents the nodes in between
|
||
|
# from queuing up incoming images and data excessively, which leads to increased
|
||
|
# latency and memory usage, unwanted in real-time mobile applications. It also
|
||
|
# eliminates unnecessarily computation, e.g., a transformed image produced by
|
||
|
# ImageTransformationCalculator may get dropped downstream if the subsequent
|
||
|
# TfLiteConverterCalculator or TfLiteInferenceCalculator is still busy
|
||
|
# processing previous inputs.
|
||
|
node {
|
||
|
calculator: "FlowLimiterCalculator"
|
||
|
input_stream: "input_video"
|
||
|
input_stream: "FINISHED:hair_mask"
|
||
|
input_stream_info: {
|
||
|
tag_index: "FINISHED"
|
||
|
back_edge: true
|
||
|
}
|
||
|
output_stream: "throttled_input_video"
|
||
|
}
|
||
|
|
||
|
# Transforms the input image on CPU to a 512x512 image. To scale the image, by
|
||
|
# default it uses the STRETCH scale mode that maps the entire input image to the
|
||
|
# entire transformed image. As a result, image aspect ratio may be changed and
|
||
|
# objects in the image may be deformed (stretched or squeezed), but the hair
|
||
|
# segmentation model used in this graph is agnostic to that deformation.
|
||
|
node: {
|
||
|
calculator: "ImageTransformationCalculator"
|
||
|
input_stream: "IMAGE:throttled_input_video"
|
||
|
output_stream: "IMAGE:transformed_input_video"
|
||
|
node_options: {
|
||
|
[type.googleapis.com/mediapipe.ImageTransformationCalculatorOptions] {
|
||
|
output_width: 512
|
||
|
output_height: 512
|
||
|
}
|
||
|
}
|
||
|
}
|
||
|
|
||
|
# Caches a mask fed back from the previous round of hair segmentation, and upon
|
||
|
# the arrival of the next input image sends out the cached mask with the
|
||
|
# timestamp replaced by that of the input image, essentially generating a packet
|
||
|
# that carries the previous mask. Note that upon the arrival of the very first
|
||
|
# input image, an empty packet is sent out to jump start the feedback loop.
|
||
|
node {
|
||
|
calculator: "PreviousLoopbackCalculator"
|
||
|
input_stream: "MAIN:throttled_input_video"
|
||
|
input_stream: "LOOP:hair_mask"
|
||
|
input_stream_info: {
|
||
|
tag_index: "LOOP"
|
||
|
back_edge: true
|
||
|
}
|
||
|
output_stream: "PREV_LOOP:previous_hair_mask"
|
||
|
}
|
||
|
|
||
|
# Embeds the hair mask generated from the previous round of hair segmentation
|
||
|
# as the alpha channel of the current input image.
|
||
|
node {
|
||
|
calculator: "SetAlphaCalculator"
|
||
|
input_stream: "IMAGE:transformed_input_video"
|
||
|
input_stream: "ALPHA:previous_hair_mask"
|
||
|
output_stream: "IMAGE:mask_embedded_input_video"
|
||
|
}
|
||
|
|
||
|
# Converts the transformed input image on CPU into an image tensor stored in
|
||
|
# TfLiteTensor. The zero_center option is set to false to normalize the
|
||
|
# pixel values to [0.f, 1.f] as opposed to [-1.f, 1.f]. With the
|
||
|
# max_num_channels option set to 4, all 4 RGBA channels are contained in the
|
||
|
# image tensor.
|
||
|
node {
|
||
|
calculator: "TfLiteConverterCalculator"
|
||
|
input_stream: "IMAGE:mask_embedded_input_video"
|
||
|
output_stream: "TENSORS:image_tensor"
|
||
|
node_options: {
|
||
|
[type.googleapis.com/mediapipe.TfLiteConverterCalculatorOptions] {
|
||
|
zero_center: false
|
||
|
max_num_channels: 4
|
||
|
}
|
||
|
}
|
||
|
}
|
||
|
|
||
|
# Generates a single side packet containing a TensorFlow Lite op resolver that
|
||
|
# supports custom ops needed by the model used in this graph.
|
||
|
node {
|
||
|
calculator: "TfLiteCustomOpResolverCalculator"
|
||
|
output_side_packet: "op_resolver"
|
||
|
node_options: {
|
||
|
[type.googleapis.com/mediapipe.TfLiteCustomOpResolverCalculatorOptions] {
|
||
|
use_gpu: false
|
||
|
}
|
||
|
}
|
||
|
}
|
||
|
|
||
|
# Runs a TensorFlow Lite model on CPU that takes an image tensor and outputs a
|
||
|
# tensor representing the hair segmentation, which has the same width and height
|
||
|
# as the input image tensor.
|
||
|
node {
|
||
|
calculator: "TfLiteInferenceCalculator"
|
||
|
input_stream: "TENSORS:image_tensor"
|
||
|
output_stream: "TENSORS:segmentation_tensor"
|
||
|
input_side_packet: "CUSTOM_OP_RESOLVER:op_resolver"
|
||
|
node_options: {
|
||
|
[type.googleapis.com/mediapipe.TfLiteInferenceCalculatorOptions] {
|
||
|
model_path: "mediapipe/models/hair_segmentation.tflite"
|
||
|
use_gpu: false
|
||
|
}
|
||
|
}
|
||
|
}
|
||
|
|
||
|
# Decodes the segmentation tensor generated by the TensorFlow Lite model into a
|
||
|
# mask of values in [0, 255], stored in a CPU buffer. It also
|
||
|
# takes the mask generated previously as another input to improve the temporal
|
||
|
# consistency.
|
||
|
node {
|
||
|
calculator: "TfLiteTensorsToSegmentationCalculator"
|
||
|
input_stream: "TENSORS:segmentation_tensor"
|
||
|
input_stream: "PREV_MASK:previous_hair_mask"
|
||
|
output_stream: "MASK:hair_mask"
|
||
|
node_options: {
|
||
|
[type.googleapis.com/mediapipe.TfLiteTensorsToSegmentationCalculatorOptions] {
|
||
|
tensor_width: 512
|
||
|
tensor_height: 512
|
||
|
tensor_channels: 2
|
||
|
combine_with_previous_ratio: 0.9
|
||
|
output_layer_index: 1
|
||
|
}
|
||
|
}
|
||
|
}
|
||
|
|
||
|
# Colors the hair segmentation with the color specified in the option.
|
||
|
node {
|
||
|
calculator: "RecolorCalculator"
|
||
|
input_stream: "IMAGE:throttled_input_video"
|
||
|
input_stream: "MASK:hair_mask"
|
||
|
output_stream: "IMAGE:output_video"
|
||
|
node_options: {
|
||
|
[type.googleapis.com/mediapipe.RecolorCalculatorOptions] {
|
||
|
color { r: 0 g: 0 b: 255 }
|
||
|
mask_channel: RED
|
||
|
}
|
||
|
}
|
||
|
}
|