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On Centered and Compact Signal and Image Derivatives for Feature Extraction

机译:集中和紧凑的信号和图像导数用于特征提取

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A great number of Artificial Intelligence applications are based on features extracted from signals or images. Feature extraction often requires differentiation of discrete signals and/or images in one or more dimensions. In this work we provide two Theorems for the construction of finite length (finite impulse response -FIR) masks for signal and image differentiation of any order, using central differences of any required length. Moreover, we present a very efficient algorithm for implementing the compact (implicit) differentiation of discrete signals and images, as infinite impulse response (IIR) filters. The differentiator operators are assessed in terms of their spectral properties, as well as in terms of the performance of corner detection in gray scale images, achieving higher sensitivity than standard operators. These features are considered very important for computer vision systems. The computational complexity for the centered and me explicit derivatives is also provided.
机译:大量的人工智能应用都是基于从信号或图像中提取的特征。特征提取通常需要在一个或多个维度上区分离散信号和/或图像。在这项工作中,我们提供了两个定理,用于构造有限长度(有限冲激响应-FIR)掩模,以使用任何所需长度的中心差来进行任意阶数的信号和图像微分。此外,我们提出了一种非常有效的算法,可以将离散信号和图像进行紧凑(隐式)区分,作为无限冲激响应(IIR)滤波器。根据其光谱特性以及灰度图像中角点检测的性能对微分算子进行了评估,从而获得了比标准算子更高的灵敏度。这些功能对于计算机视觉系统非常重要。还提供了中心导数和我显式导数的计算复杂性。

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