CVSep 4, 2017

Hyperspectral Light Field Stereo Matching

arXiv:1709.00835v127 citations
Originality Incremental advance
AI Analysis

This work addresses depth estimation for hyperspectral imaging, offering incremental improvements in stereo matching for specialized capture systems.

The paper tackles scene depth extraction using a hyperspectral light field system, introducing a cross-spectral pairwise matching technique and integrating spectral-dependent cues into an MRF for disparity estimation, resulting in high-quality disparity maps and applications like synthesizing all-focus images.

In this paper, we describe how scene depth can be extracted using a hyperspectral light field capture (H-LF) system. Our H-LF system consists of a 5 x 6 array of cameras, with each camera sampling a different narrow band in the visible spectrum. There are two parts to extracting scene depth. The first part is our novel cross-spectral pairwise matching technique, which involves a new spectral-invariant feature descriptor and its companion matching metric we call bidirectional weighted normalized cross correlation (BWNCC). The second part, namely, H-LF stereo matching, uses a combination of spectral-dependent correspondence and defocus cues that rely on BWNCC. These two new cost terms are integrated into a Markov Random Field (MRF) for disparity estimation. Experiments on synthetic and real H-LF data show that our approach can produce high-quality disparity maps. We also show that these results can be used to produce the complete plenoptic cube in addition to synthesizing all-focus and defocused color images under different sensor spectral responses.

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