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ALiSNet: Accurate and Lightweight Human Segmentation Network for Fashion E-Commerce

15 April 2023
Amrollah Seifoddini
K. Vernooij
Timon Künzle
A. Canopoli
Malte F. Alf
Anna Volokitin
Reza Shirvany
    3DH
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Abstract

Accurately estimating human body shape from photos can enable innovative applications in fashion, from mass customization, to size and fit recommendations and virtual try-on. Body silhouettes calculated from user pictures are effective representations of the body shape for downstream tasks. Smartphones provide a convenient way for users to capture images of their body, and on-device image processing allows predicting body segmentation while protecting users privacy. Existing off-the-shelf methods for human segmentation are closed source and cannot be specialized for our application of body shape and measurement estimation. Therefore, we create a new segmentation model by simplifying Semantic FPN with PointRend, an existing accurate model. We finetune this model on a high-quality dataset of humans in a restricted set of poses relevant for our application. We obtain our final model, ALiSNet, with a size of 4MB and 97.6±\pm±1.0%\%% mIoU, compared to Apple Person Segmentation, which has an accuracy of 94.4±\pm±5.7%\%% mIoU on our dataset.

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