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Object Detection in Degraded Visual Environments using Compressive Sensing

机译:使用压缩感测的降级的视觉环境对象检测

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Compressive Sensing (CS) has proven its ability to reduce the number of measurements required to reproduce images with similar quality to those reconstructed by observing the Shannon-Nyquist sampling criteria. By exploiting spatial redundancies, it was shown that CS can be used in target recovery and object detection. In this paper we propose a method that incorporates an effcient use of CS to locate a specific object in zero-visibility environments. We show that with the use of an over-complete dictionary of the target our technique can perceive the location of the target from hidden information in the scene. This paper will compare previously implemented algorithms with our, list the shortcomings evident in their outputs, explain our setups, detail the differences in dictionary structures, and present quantified results to support its efficacy in the results section.
机译:压缩检测(CS)已证明其能够减少通过观察Shannon-Nyquist采样标准重建的图像的重现图像所需的测量次数。 通过利用空间冗余,显示CS可以用于目标恢复和对象检测。 在本文中,我们提出了一种方法,该方法包含CS的效率使用来定位零可见环境中的特定对象。 我们表明,利用我们的技术的完整字典,我们的技术可以从场景中的隐藏信息感知目标的位置。 本文将与我们以前实现的算法进行比较,列出其产出中明显的缺点,解释我们的设置,详细说明字典结构的差异,并显示了在结果部分中支持其疗效的量化结果。

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