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An Efficient Quadratic Correlation Filter for Automatic Target Recognition

机译:用于目标自动识别的高效二次相关滤波器

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摘要

Quadratic Correlation Filters have recently been used for Automatic Target Recognition (ATR). Among these, the Rayleigh Quotient Quadratic Correlation Filter (RQQCF) was found to give excellent performance when tested extensively with Infrared imagery. In the RQQCF method, the filter coefficients are obtained, from a set of training images, such that the response to the filter is large when the input is a target and small when the input is clutter. The method explicitly maximizes a class separation metric to obtain optimal performance. In this paper, a novel transform domain approach is presented for ATR using the RQQCF. The proposed approach, called the Transform Domain RQQCF (TDRQQCF) considerably reduces the computational complexity and storage requirements, by compressing the target and clutter data used in designing the QCF. Since the dimensionality of the data points is reduced, this method also overcomes the common problem of dealing with low rank matrices arising from the lack of large training sets in practice. This is achieved while retaining the high recognition accuracy of the original RQQCF technique. The proposed method is tested using IR imagery, and sample results are presented which confirm its excellent properties.
机译:二次相关滤波器最近已用于自动目标识别(ATR)。其中,在与红外图像进行广泛测试时,发现瑞利商二次相关滤波器(RQQCF)具有出色的性能。在RQQCF方法中,从一组训练图像中获得滤波器系数,从而当输入为目标时对滤波器的响应较大,而当输入为杂波时对滤波器的响应较小。该方法显式地最大化类分离度量以获得最佳性能。在本文中,提出了一种使用RQQCF进行ATR的新颖变换域方法。通过压缩设计QCF时使用的目标数据和杂乱数据,称为“变换域RQQCF(TDRQQCF)”的提议方法大大降低了计算复杂性和存储要求。由于减少了数据点的维数,因此该方法还克服了在实践中由于缺乏大型训练集而导致的处理低秩矩阵的普遍问题。这是在保留原始RQQCF技术的高识别精度的同时实现的。使用红外图像对提出的方法进行了测试,并给出了样品结果,证实了其优异的性能。

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