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The Spatial Vision Tree: A Generic Pattern Recognition Engine-Scientific Foundations, Design Principles, and Preliminary Tree Design

机译:空间视觉树:通用模式识别引擎-科学基础,设计原理和初步树设计

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New foundational ideas are used to define a novel approach to generic visual pattern recognition. These ideas proceed from the starting point of the intrinsic equivalence of noise reduction and pattern recognition when noise reduction is taken to its theoretical limit of explicit matched filtering. This led us to think of the logical extension of sparse coding using basis function transforms for both de-noising and pattern recognition to the full pattern specificity of a lexicon of matched filter pattern templates. A key hypothesis is that such a lexicon can be constructed and is, in fact, a generic visual alphabet of spatial vision. Hence it provides a tractable solution for the design of a generic pattern recognition engine. Here we present the key scientific ideas, the basic design principles which emerge from these ideas, and a preliminary design of the Spatial Vision Tree (SVT). The latter is based upon a cryptographic approach whereby we measure a large aggregate estimate of the frequency of occurrence (FOO) for each pattern. These distributions are employed together with Hamming distance criteria to design a two-tier tree. Then using information theory, these same FOO distributions are used to define a precise method for pattern representation. Finally the experimental performance of the preliminary SVT on computer generated test images and complex natural images is assessed.
机译:新的基础思想用于定义一种通用的视觉模式识别的新颖方法。这些想法从降噪和模式识别的内在等价性的出发点出发,即当将降噪考虑到其显式匹配滤波的理论极限时。这使我们想到了使用基函数变换进行稀疏编码的逻辑扩展,以进行去噪和模式识别,以匹配滤波器模式模板的词典的全部模式特异性。一个关键的假设是,可以构建这样的词典,实际上,它是空间视觉的通用视觉字母。因此,它为通用模式识别引擎的设计提供了一种易于处理的解决方案。在这里,我们介绍了关键的科学思想,从这些思想中产生的基本设计原理以及空间视觉树(SVT)的初步设计。后者基于一种加密方法,通过该方法,我们对每种模式的发生频率(FOO)进行大的总体估计。这些分布与汉明距离标准一起用于设计两层树。然后使用信息论,将这些相同的FOO分布用于定义模式表示的精确方法。最后,评估了初步SVT在计算机生成的测试图像和复杂自然图像上的实验性能。

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