Litcius/Paper detail

ARShoe

Shan An, Guangfu Che, Jinghao Guo, Haogang Zhu, Junjie Ye, Fangru Zhou, Zhaoqi Zhu, Wei Dong, Aishan Liu, Wayne Zhang

202120 citationsDOIOpen Access PDF

Abstract

Virtual try-on technology enables users to try various fashion items using augmented reality and provides a convenient online shopping experience. However, most previous works focus on the virtual try-on for clothes while neglecting that for shoes, which is also a promising task. To this concern, this work proposes a real-time augmented reality virtual shoe try-on system for smartphones, namely ARShoe. Specifically, ARShoe adopts a novel multi-branch network to realize pose estimation and segmentation simultaneously. A solution to generate realistic 3D shoe model occlusion during the try-on process is presented. To achieve a smooth and stable try-on effect, this work further develop a novel stabilization method. Moreover, for training and evaluation, we construct the very first large-scale foot benchmark with multiple virtual shoe try-on task-related labels annotated. Exhaustive experiments on our newly constructed benchmark demonstrate the satisfying performance of ARShoe. Practical tests on common smartphones validate the real-time performance and stabilization of the proposed approach.

Topics & Concepts

Computer scienceBenchmark (surveying)Task (project management)Focus (optics)Augmented realityProcess (computing)Virtual realityConstruct (python library)SegmentationPoseArtificial intelligenceClothingHuman–computer interactionComputer visionEngineeringOperating systemProgramming languageArchaeologyGeographySystems engineeringPhysicsHistoryOpticsGeodesyHuman Pose and Action RecognitionAdvanced Vision and ImagingHand Gesture Recognition Systems
ARShoe | Litcius