基于相关滤波器和稀疏表示的压缩测量目标检测

Héctor Vargas, Y. Fonseca, H. Arguello
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引用次数: 16

摘要

压缩相机使用随机投影而不是奈奎斯特采样率来获取场景的测量值。利用已有的场景知识,提出了几种重建算法。然而,一些推理任务只需要确定场景的某些信息,而不需要进行高计算重建步骤。为了减少重构问题的计算量,本文提出了一种基于相关滤波器和稀疏表示的高效目标检测方法。研究了多波段图像遥感场景中像素昂贵的目标检测问题。相关滤波器的设计利用目标外观和目标形状的明确知识,提供了一种从压缩测量中识别目标的方法。数值实验用模拟数据验证了该方法在峰旁瓣比方面的有效性和有效性。
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Object Detection on Compressive Measurements using Correlation Filters and Sparse Representation
Compressive cameras acquire measurements of a scene using random projections instead of sampling at Nyquist rate. Several reconstruction algorithms have been proposed, taking advantage of previous knowledge about the scene. However, some inference tasks require to determine only certain information of the scene without incurring in the high computational reconstruction step. By reducing the computation load related to the reconstruction problem, this paper proposes a computationally efficient object detection approach based on correlation filters and sparse representation that operate over compressive measurements. We consider the problem of object detection in remote sensing scenes with multi-band images, where the pixels are expensive. The correlation filters are designed using explicit knowledge of the target appearance and the target shape to provide a way to recognize the objects from compressive measurements. Numerical experiments show the validity and efficiency of the proposed method in terms of peak-to-side lobe ratio using simulated data.
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