快速,高动态范围光场处理模式识别

Scott McCloskey, B. Miller
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引用次数: 3

摘要

提出了一种光场处理方法来快速生成用于模式识别的图像。与美学目的的处理不同,我们的目标不是生成最好看的图像,而是尽可能快地生成可识别的图像。通过利用识别算法的动态范围和对光学离焦的鲁棒性,我们开发了精心选择的权衡,以确保在更低的计算复杂性水平下进行识别。利用该算法的动态范围,通过最小化用于重聚焦的光场视图的数量,可以获得很大的加速。对光学离焦的鲁棒性使我们能够量化重焦参数并最小化插值次数。结果通过动态规划进行联合优化,选择一组视图,当组合时,在尽可能少的计算时间内产生可识别的重新聚焦图像。我们展示了使用Lytro相机改进的条形码扫描识别动态范围,以及在低功耗嵌入式处理器上显著降低的计算复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast, high dynamic range light field processing for pattern recognition
We present a light field processing method to quickly produce an image for pattern recognition. Unlike processing for aesthetic purposes, our objective is not to produce the best-looking image, but to produce a recognizable image as fast as possible. By leveraging the recognition algorithm's dynamic range and robustness to optical defocus, we develop carefully-chosen tradeoffs to ensure recognition at a much lower level of computational complexity. Capitalizing on the algorithm's dynamic range yields large speedups by minimizing the number of light field views used in refocusing. Robustness to optical defocus allows us to quantize the refocus parameter and minimize the number of interpolations. The resulting joint optimization is performed via dynamic programming to choose the set of views which, when combined, produce a recognizable refocused image in the least possible computing time. We demonstrate the improved recognition dynamic range of barcode scanning using a Lytro camera, and dramatic reductions in computational complexity on a low-power embedded processor.
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