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Stochastic resonance investigation of object detection in images

机译:图像中目标检测的随机共振研究

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摘要

Object detection in images was conducted using a nonlinear means of improving signal to noise ratio termed "stochastic resonance" (SR). In a recent United States patent application, it was shown that arbitrarily large signal to noise ratio gains could be realized when a signal detection problem is cast within the context of a SR filter. Signal-to-noise ratio measures were investigated. For a binary object recognition task (friendly versus hostile), the method was implemented by perturbing the recognition algorithm and subsequently thresholding via a computer simulation. To fairly test the efficacy of the proposed algorithm, a unique database of images has been constructed by modifying two sample library objects by adjusting their brightness, contrast and relative size via commercial software to gradually compromise their saliency to identification. The key to the use of the SR method is to produce a small perturbation in the identification algorithm and then to threshold the results, thus improving the overall system's ability to discern objects. A background discussion of the SR method is presented. A standard test is proposed in which object identification algorithms could be fairly compared against each other with respect to their relative performance.
机译:使用改善信噪比的非线性手段(称为“随机共振”(SR))进行图像中的对象检测。在最近的美国专利申请中,表明了当在SR滤波器的背景下产生信号检测问题时,可以实现任意大的信噪比增益。研究了信噪比测量。对于二进制对象识别任务(友好还是敌对),该方法是通过扰动识别算法并随后通过计算机模拟进行阈值化来实现的。为了公平地测试所提出算法的有效性,通过使用商业软件通过调整两个样本库对象的亮度,对比度和相对大小来修改它们的显着性以逐渐损害它们的显着性,从而构造了一个独特的图像数据库。使用SR方法的关键是在识别算法中产生较小的扰动,然后对结果进行阈值处理,从而提高整个系统识别对象的能力。提出了SR方法的背景讨论。提出了一种标准测试,其中可以相对于对象识别算法的相对性能公平地比较它们。

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