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Mach bands and multiscale models of spatial vision: The role of first, second, and third derivative operators in encoding bars and edges

机译:马赫带和空间视觉的多尺度模型:一阶,二阶和三阶导数算子在条形和边缘编码中的作用

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Abstract Abstract: Abstract?? Ernst Mach observed that light or dark bands could be seen at abrupt changes of luminance gradient in the absence of peaks or troughs in luminance. Many models of feature detection share the idea that bars, lines, and Mach bands are found at peaks and troughs in the output of even-symmetric spatial filters. Our experiments assessed the appearance of Mach bands (position and width) and the probability of seeing them on a novel set of generalized Gaussian edges. Mach band probability was mainly determined by the shape of the luminance profile and increased with the sharpness of its corners, controlled by a single parameter (n). Doubling or halving the size of the images had no significant effect. Variations in contrast (20%a??80%) and duration (50a??300 ms) had relatively minor effects. These results rule out the idea that Mach bands depend simply on the amplitude of the second derivative, but a multiscale model, based on Gaussian-smoothed first- and second-derivative filtering, can account accurately for the probability and perceived spatial layout of the bands. A key idea is that Mach band visibility depends on the ratio of second- to first-derivative responses at peaks in the second-derivative scale-space map. This ratio is approximately scale-invariant and increases with the sharpness of the corners of the luminance ramp, as observed. The edges of Mach bands pose a surprisingly difficult challenge for models of edge detection, but a nonlinear third-derivative operation is shown to predict the locations of Mach band edges strikingly well. Mach bands thus shed new light on the role of multiscale filtering systems in feature coding.
机译:摘要摘要:摘要?恩斯特·马赫(Ernst Mach)观察到,在没有亮度峰值或谷值的情况下,亮度梯度的突然变化可以看到亮带或暗带。特征检测的许多模型都具有这样的想法,即在偶数对称空间滤波器的输出的峰值和谷值处都可以找到条形,线形和马赫带。我们的实验评估了马赫带的外观(位置和宽度)以及在一组新颖的广义高斯边缘上看到它们的可能性。马赫带概率主要由亮度分布图的形状决定,并随其拐角的锐度而增加,由单个参数(n)控制。将图像大小加倍或减半没有明显影响。对比度(20%a≤80%)和持续时间(50a≤300ms)的变化影响相对较小。这些结果排除了马赫谱带仅取决于二阶导数幅度的想法,但是基于高斯平滑的一阶和二阶导数滤波的多尺度模型可以准确地解释谱带的概率和感知的空间布局。一个关键的想法是,马赫带的能见度取决于二阶导数-空间图中峰值处的二阶与一阶导数响应的比率。如所观察到的,该比率大约是尺度不变的,并且随着亮度斜坡的拐角的锐度而增加。马赫带的边缘对边缘检测模型提出了令人惊讶的挑战,但是非线性三阶导数运算显示出可以很好地预测马赫带边缘的位置。马赫带因此为多尺度滤波系统在特征编码中的作用提供了新的启示。

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