The article discusses the development of NLOS-LTM, a method for passive non-line-of-sight imaging that can handle multiple light transport conditions with a single network. It introduces a novel approach to inferring a latent light transport representation from projection images and using it to modulate the reconstruction network. The method is compared with existing techniques through extensive experiments on a large-scale passive NLOS dataset, demonstrating superior performance. Key components include joint learning of reconstruction and reprojection networks, a light transport encoder with vector quantization, and light transport modulation blocks. The article also includes an in-depth methodology section, experimental results, and an ablation study to showcase the effectiveness of each component.
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