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arXiv 提交日期: 2026-01-06
📄 Abstract - Guardians of the Hair: Rescuing Soft Boundaries in Depth, Stereo, and Novel Views

Soft boundaries, like thin hairs, are commonly observed in natural and computer-generated imagery, but they remain challenging for 3D vision due to the ambiguous mixing of foreground and background cues. This paper introduces Guardians of the Hair (HairGuard), a framework designed to recover fine-grained soft boundary details in 3D vision tasks. Specifically, we first propose a novel data curation pipeline that leverages image matting datasets for training and design a depth fixer network to automatically identify soft boundary regions. With a gated residual module, the depth fixer refines depth precisely around soft boundaries while maintaining global depth quality, allowing plug-and-play integration with state-of-the-art depth models. For view synthesis, we perform depth-based forward warping to retain high-fidelity textures, followed by a generative scene painter that fills disoccluded regions and eliminates redundant background artifacts within soft boundaries. Finally, a color fuser adaptively combines warped and inpainted results to produce novel views with consistent geometry and fine-grained details. Extensive experiments demonstrate that HairGuard achieves state-of-the-art performance across monocular depth estimation, stereo image/video conversion, and novel view synthesis, with significant improvements in soft boundary regions.

顶级标签: computer vision multi-modal model training
详细标签: depth estimation view synthesis soft boundaries image matting 3d vision 或 搜索:

头发的守护者:在深度、立体视觉和新视角合成中拯救软边界 / Guardians of the Hair: Rescuing Soft Boundaries in Depth, Stereo, and Novel Views


1️⃣ 一句话总结

这篇论文提出了一个名为HairGuard的新框架,它专门解决计算机视觉中像头发丝这类前景与背景混合的‘软边界’难题,通过创新的数据处理和修复网络,显著提升了深度估计、立体视觉转换和新视角合成等任务在这些精细区域的表现。

源自 arXiv: 2601.03362