Guided Depth Upsampling via a Cosparse Analysis Model

CVPR Workshops(2014)

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摘要
This paper proposes a new approach to upsample depth maps when aligned high-resolution color images are given. Such a task is referred to as guided depth upsampling in our work. We formulate this problem based on the recently developed sparse representation analysis models. More specifically, we exploit the cosparsity of analytic analysis operators performed on a depth map, together with data fidelity and color guided smoothness constraints for upsampling. The formulated problem is solved by the greedy analysis pursuit algorithm. Since our approach relies on the analytic operators such as the Wavelet transforms and the finite difference operators, it does not require any training data but a single depth-color image pair. A variety of experiments have been conducted on both synthetic and real data. Experimental results demonstrate that our approach outperforms the specialized state-of-the-art algorithms.
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关键词
guided depth upsampling, cosparse analysis model, multi-modal data fusion,image representation,multi-modal data fusion,guided depth upsampling,sparse representation analysis models,wavelet transforms,depth maps,cosparse analysis model,image resolution,aligned high-resolution color images,color guided smoothness constraints,data fidelity,image sampling,greedy algorithms,finite difference operators,greedy analysis pursuit algorithm,depth-color image pair,analysis operators,finite difference methods,image colour analysis,image reconstruction,color,algorithm design and analysis
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