Shadow Removal by High-Quality Shadow Synthesis
- URL: http://arxiv.org/abs/2212.04108v2
- Date: Sun, 9 Jul 2023 00:54:17 GMT
- Title: Shadow Removal by High-Quality Shadow Synthesis
- Authors: Yunshan Zhong, Lizhou You, Yuxin Zhang, Fei Chao, Yonghong Tian,
Rongrong Ji
- Abstract summary: HQSS employs a shadow feature encoder and a generator to synthesize pseudo images.
HQSS is observed to outperform the state-of-the-art methods on ISTD dataset, Video Shadow Removal dataset, and SRD dataset.
- Score: 78.56549207362863
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Most shadow removal methods rely on the invasion of training images
associated with laborious and lavish shadow region annotations, leading to the
increasing popularity of shadow image synthesis. However, the poor performance
also stems from these synthesized images since they are often
shadow-inauthentic and details-impaired. In this paper, we present a novel
generation framework, referred to as HQSS, for high-quality pseudo shadow image
synthesis. The given image is first decoupled into a shadow region identity and
a non-shadow region identity. HQSS employs a shadow feature encoder and a
generator to synthesize pseudo images. Specifically, the encoder extracts the
shadow feature of a region identity which is then paired with another region
identity to serve as the generator input to synthesize a pseudo image. The
pseudo image is expected to have the shadow feature as its input shadow feature
and as well as a real-like image detail as its input region identity. To
fulfill this goal, we design three learning objectives. When the shadow feature
and input region identity are from the same region identity, we propose a
self-reconstruction loss that guides the generator to reconstruct an identical
pseudo image as its input. When the shadow feature and input region identity
are from different identities, we introduce an inter-reconstruction loss and a
cycle-reconstruction loss to make sure that shadow characteristics and detail
information can be well retained in the synthesized images. Our HQSS is
observed to outperform the state-of-the-art methods on ISTD dataset, Video
Shadow Removal dataset, and SRD dataset. The code is available at
https://github.com/zysxmu/HQSS.
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