GRCVIVJun 13, 2018

Convolutional sparse coding for capturing high speed video content

arXiv:1806.04935v17 citations
Originality Incremental advance
AI Analysis

This addresses the problem of expensive hardware limitations for capturing high-resolution videos, offering an incremental improvement over existing compressive sensing approaches.

The paper tackles the trade-off between spatial and temporal resolution in high-speed video capture by introducing a convolutional sparse coding technique that outperforms state-of-the-art patch-based methods in flexibility and efficiency.

Video capture is limited by the trade-off between spatial and temporal resolution: when capturing videos of high temporal resolution, the spatial resolution decreases due to bandwidth limitations in the capture system. Achieving both high spatial and temporal resolution is only possible with highly specialized and very expensive hardware, and even then the same basic trade-off remains. The recent introduction of compressive sensing and sparse reconstruction techniques allows for the capture of single-shot high-speed video, by coding the temporal information in a single frame, and then reconstructing the full video sequence from this single coded image and a trained dictionary of image patches. In this paper, we first analyze this approach, and find insights that help improve the quality of the reconstructed videos. We then introduce a novel technique, based on convolutional sparse coding (CSC), and show how it outperforms the state-of-the-art, patch-based approach in terms of flexibility and efficiency, due to the convolutional nature of its filter banks. The key idea for CSC high-speed video acquisition is extending the basic formulation by imposing an additional constraint in the temporal dimension, which enforces sparsity of the first-order derivatives over time.

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