--- layout: forward target: https://developers.google.com/mediapipe/solutions/vision/image_segmenter/ title: Selfie Segmentation parent: Solutions nav_order: 7 --- # MediaPipe Selfie Segmentation {: .no_toc }
Table of contents {: .text-delta } 1. TOC {:toc}
--- **Attention:** *Thank you for your interest in MediaPipe Solutions. As of April 4, 2023, this solution was upgraded to a new MediaPipe Solution. For more information, see the [MediaPipe Solutions](https://developers.google.com/mediapipe/solutions/vision/image_segmenter/) site.* ---- ## Overview *Fig 1. Example of MediaPipe Selfie Segmentation.* | :------------------------------------------------: | | MediaPipe Selfie Segmentation segments the prominent humans in the scene. It can run in real-time on both smartphones and laptops. The intended use cases include selfie effects and video conferencing, where the person is close (< 2m) to the camera. ## Models In this solution, we provide two models: general and landscape. Both models are based on [MobileNetV3](https://ai.googleblog.com/2019/11/introducing-next-generation-on-device.html), with modifications to make them more efficient. The general model operates on a 256x256x3 (HWC) tensor, and outputs a 256x256x1 tensor representing the segmentation mask. The landscape model is similar to the general model, but operates on a 144x256x3 (HWC) tensor. It has fewer FLOPs than the general model, and therefore, runs faster. Note that MediaPipe Selfie Segmentation automatically resizes the input image to the desired tensor dimension before feeding it into the ML models. The general model is also powering [ML Kit](https://developers.google.com/ml-kit/vision/selfie-segmentation), and a variant of the landscape model is powering [Google Meet](https://ai.googleblog.com/2020/10/background-features-in-google-meet.html). Please find more detail about the models in the [model card](./models.md#selfie-segmentation). ## ML Pipeline The pipeline is implemented as a MediaPipe [graph](https://github.com/google/mediapipe/tree/master/mediapipe/graphs/selfie_segmentation/selfie_segmentation_gpu.pbtxt) that uses a [selfie segmentation subgraph](https://github.com/google/mediapipe/tree/master/mediapipe/modules/selfie_segmentation/selfie_segmentation_gpu.pbtxt) from the [selfie segmentation module](https://github.com/google/mediapipe/tree/master/mediapipe/modules/selfie_segmentation). Note: To visualize a graph, copy the graph and paste it into [MediaPipe Visualizer](https://viz.mediapipe.dev/). For more information on how to visualize its associated subgraphs, please see [visualizer documentation](../tools/visualizer.md). ## Solution APIs ### Cross-platform Configuration Options Naming style and availability may differ slightly across platforms/languages. #### model_selection An integer index `0` or `1`. Use `0` to select the general model, and `1` to select the landscape model (see details in [Models](#models)). Default to `0` if not specified. ### Output Naming style may differ slightly across platforms/languages. #### segmentation_mask The output segmentation mask, which has the same dimension as the input image. ### Python Solution API Please first follow general [instructions](../getting_started/python.md) to install MediaPipe Python package, then learn more in the companion [Python Colab](#resources) and the usage example below. Supported configuration options: * [model_selection](#model_selection) ```python import cv2 import mediapipe as mp import numpy as np mp_drawing = mp.solutions.drawing_utils mp_selfie_segmentation = mp.solutions.selfie_segmentation # For static images: IMAGE_FILES = [] BG_COLOR = (192, 192, 192) # gray MASK_COLOR = (255, 255, 255) # white with mp_selfie_segmentation.SelfieSegmentation( model_selection=0) as selfie_segmentation: for idx, file in enumerate(IMAGE_FILES): image = cv2.imread(file) image_height, image_width, _ = image.shape # Convert the BGR image to RGB before processing. results = selfie_segmentation.process(cv2.cvtColor(image, cv2.COLOR_BGR2RGB)) # Draw selfie segmentation on the background image. # To improve segmentation around boundaries, consider applying a joint # bilateral filter to "results.segmentation_mask" with "image". condition = np.stack((results.segmentation_mask,) * 3, axis=-1) > 0.1 # Generate solid color images for showing the output selfie segmentation mask. fg_image = np.zeros(image.shape, dtype=np.uint8) fg_image[:] = MASK_COLOR bg_image = np.zeros(image.shape, dtype=np.uint8) bg_image[:] = BG_COLOR output_image = np.where(condition, fg_image, bg_image) cv2.imwrite('/tmp/selfie_segmentation_output' + str(idx) + '.png', output_image) # For webcam input: BG_COLOR = (192, 192, 192) # gray cap = cv2.VideoCapture(0) with mp_selfie_segmentation.SelfieSegmentation( model_selection=1) as selfie_segmentation: bg_image = None while cap.isOpened(): success, image = cap.read() if not success: print("Ignoring empty camera frame.") # If loading a video, use 'break' instead of 'continue'. continue # Flip the image horizontally for a later selfie-view display, and convert # the BGR image to RGB. image = cv2.cvtColor(cv2.flip(image, 1), cv2.COLOR_BGR2RGB) # To improve performance, optionally mark the image as not writeable to # pass by reference. image.flags.writeable = False results = selfie_segmentation.process(image) image.flags.writeable = True image = cv2.cvtColor(image, cv2.COLOR_RGB2BGR) # Draw selfie segmentation on the background image. # To improve segmentation around boundaries, consider applying a joint # bilateral filter to "results.segmentation_mask" with "image". condition = np.stack( (results.segmentation_mask,) * 3, axis=-1) > 0.1 # The background can be customized. # a) Load an image (with the same width and height of the input image) to # be the background, e.g., bg_image = cv2.imread('/path/to/image/file') # b) Blur the input image by applying image filtering, e.g., # bg_image = cv2.GaussianBlur(image,(55,55),0) if bg_image is None: bg_image = np.zeros(image.shape, dtype=np.uint8) bg_image[:] = BG_COLOR output_image = np.where(condition, image, bg_image) cv2.imshow('MediaPipe Selfie Segmentation', output_image) if cv2.waitKey(5) & 0xFF == 27: break cap.release() ``` ### JavaScript Solution API Please first see general [introduction](../getting_started/javascript.md) on MediaPipe in JavaScript, then learn more in the companion [web demo](#resources) and the following usage example. Supported configuration options: * [modelSelection](#model_selection) ```html
``` ```javascript ``` ## Example Apps Please first see general instructions for [Android](../getting_started/android.md), [iOS](../getting_started/ios.md), and [desktop](../getting_started/cpp.md) on how to build MediaPipe examples. Note: To visualize a graph, copy the graph and paste it into [MediaPipe Visualizer](https://viz.mediapipe.dev/). For more information on how to visualize its associated subgraphs, please see [visualizer documentation](../tools/visualizer.md). ### Mobile * Graph: [`mediapipe/graphs/selfie_segmentation/selfie_segmentation_gpu.pbtxt`](https://github.com/google/mediapipe/tree/master/mediapipe/graphs/selfie_segmentation/selfie_segmentation_gpu.pbtxt) * Android target: [(or download prebuilt ARM64 APK)](https://drive.google.com/file/d/1DoeyGzMmWUsjfVgZfGGecrn7GKzYcEAo/view?usp=sharing) [`mediapipe/examples/android/src/java/com/google/mediapipe/apps/selfiesegmentationgpu:selfiesegmentationgpu`](https://github.com/google/mediapipe/tree/master/mediapipe/examples/android/src/java/com/google/mediapipe/apps/selfiesegmentationgpu/BUILD) * iOS target: [`mediapipe/examples/ios/selfiesegmentationgpu:SelfieSegmentationGpuApp`](https://github.com/google/mediapipe/tree/master/mediapipe/examples/ios/selfiesegmentationgpu/BUILD) ### Desktop Please first see general instructions for [desktop](../getting_started/cpp.md) on how to build MediaPipe examples. * Running on CPU * Graph: [`mediapipe/graphs/selfie_segmentation/selfie_segmentation_cpu.pbtxt`](https://github.com/google/mediapipe/tree/master/mediapipe/graphs/selfie_segmentation/selfie_segmentation_cpu.pbtxt) * Target: [`mediapipe/examples/desktop/selfie_segmentation:selfie_segmentation_cpu`](https://github.com/google/mediapipe/tree/master/mediapipe/examples/desktop/selfie_segmentation/BUILD) * Running on GPU * Graph: [`mediapipe/graphs/selfie_segmentation/selfie_segmentation_gpu.pbtxt`](https://github.com/google/mediapipe/tree/master/mediapipe/graphs/selfie_segmentation/selfie_segmentation_gpu.pbtxt) * Target: [`mediapipe/examples/desktop/selfie_segmentation:selfie_segmentation_gpu`](https://github.com/google/mediapipe/tree/master/mediapipe/examples/desktop/selfie_segmentation/BUILD) ## Resources * Google AI Blog: [Background Features in Google Meet, Powered by Web ML](https://ai.googleblog.com/2020/10/background-features-in-google-meet.html) * [ML Kit Selfie Segmentation API](https://developers.google.com/ml-kit/vision/selfie-segmentation) * [Models and model cards](./models.md#selfie-segmentation) * [Web demo](https://code.mediapipe.dev/codepen/selfie_segmentation) * [Python Colab](https://mediapipe.page.link/selfie_segmentation_py_colab)