Hand-Shadow Poser
Hao Xu, Yinqiao Wang, Niloy J. Mitra, Shuaicheng Liu, Pheng-Ann Heng, Chi-Wing Fu

TL;DR
This paper introduces Hand-Shadow Poser, a three-stage pipeline that infers plausible hand poses from shadow shapes, enabling realistic hand-shadow art creation without specialized training data.
Contribution
It presents a novel, trainable pipeline that decouples anatomical and semantic constraints to generate diverse hand poses from shadow shapes, validated on a new benchmark.
Findings
Achieves over 85% success rate on diverse shadow shapes
Develops a new DINOv2-based shadow shape evaluation metric
Provides a comprehensive benchmark with 210 shadow shapes
Abstract
Hand shadow art is a captivating art form, creatively using hand shadows to reproduce expressive shapes on the wall. In this work, we study an inverse problem: given a target shape, find the poses of left and right hands that together best produce a shadow resembling the input. This problem is nontrivial, since the design space of 3D hand poses is huge while being restrictive due to anatomical constraints. Also, we need to attend to the input's shape and crucial features, though the input is colorless and textureless. To meet these challenges, we design Hand-Shadow Poser, a three-stage pipeline, to decouple the anatomical constraints (by hand) and semantic constraints (by shadow shape): (i) a generative hand assignment module to explore diverse but reasonable left/right-hand shape hypotheses; (ii) a generalized hand-shadow alignment module to infer coarse hand poses with a…
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Taxonomy
MethodsSparse Evolutionary Training
