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Composite filtering strategy for improving distortion invariance in object recognition

机译:用于改善目标识别中失真不变性的复合滤波策略

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Correlation-based pattern recognition filtering methods such as the eigenextended maximum average correlation height (EEMACH) filter is considered an effective tool in object recognition applications. However, these approaches require exclusive training for all possible distortions including in-plane as well as out-of-plane rotation, scale and illumination variations. The overall training process is exhaustive and requires training of filter banks to handle specific types of distortion separately. To overcome the aforementioned limitations, the authors propose a new difference of Gaussian (DoG)-based logarithmically preprocessed EEMACH filter which can manage multiple distortions in a single training instance while ensuring inherent control over illumination variations. The DoG-based logarithmic treatment exploits inherent capabilities of logarithmic preprocessing to manage scale and in-plane rotations. By reducing the number of classifier instances to one third, it not only reduces the computation complexity of the process to 33%, but also enhances the object recognition performance. The cumulative improvement is up to 2.73% in case of rotations and 10.8% in case of scaling by incorporating reinforced edges due to DoG operation. The resultant filter displays significantly enhanced recognition performance leading to a higher percentage of correct machine decisions, especially when an input scene contains multiple distortions.
机译:基于相关性的模式识别过滤方法(例如特征扩展的最大平均相关高度(EEMACH)过滤器)被认为是对象识别应用中的有效工具。但是,这些方法需要针对所有可能的失真进行专门的训练,包括平面内以及平面外旋转,缩放和照明变化。整个培训过程是详尽无遗的,需要对滤波器组进行培训以分别处理特定类型的失真。为了克服上述局限性,作者提出了一种基于高斯(DoG)的对数预处理EEMACH滤波器的新区别,该滤波器可以在单个训练实例中处理多个失真,同时确保对照明变化的内在控制。基于DoG的对数处理利用对数预处理的固有功能来管理缩放和平面内旋转。通过将分类器实例的数量减少到三分之一,不仅将过程的计算复杂度降低到33%,而且还提高了对象识别性能。通过合并由于DoG操作而产生的增强边缘,在旋转情况下的累积改善高达2.73%,在缩放情况下的累积改善高达10.8%。所得的滤波器显示出明显增强的识别性能,从而导致较高的正确机器决策百分比,尤其是在输入场景包含多个失真的情况下。

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