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Neural network for visual contrast detection

机译:神经网络用于视觉对比检测

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Most approaches that model biological early vision systems perform at the cortical level of simple cells a linear integration of the activity from visual ON and OFF pathways. Based on empirical as well as theoretical investigations we propose a nonlinear neural network model that is selectively responsive to contrast magnitude as well as to the sharpness of luminance transition. The nonlinear circuit allows for accurate and reliable detection of contrast changes even in noisy images. Simulations with artificial and camera images show higher positional selectivity for local contrasts than an equivalent linear device. Furthermore, in a multiscale hierarchy the nonlinear circuit produces a unique maximum response in scale-space where scale directly relates to the width of the luminance transition.
机译:对生物早期视觉系统进行建模的大多数方法都在简单细胞的皮质层执行来自视觉ON和OFF路径的活动的线性整合。基于经验和理论研究,我们提出了一种非线性神经网络模型,该模型可以选择性地响应对比度大小以及亮度过渡的清晰度。非线性电路即使在嘈杂的图像中也可以准确可靠地检测对比度变化。与等效的线性设备相比,使用人造图像和照相机图像进行的仿真显示出更高的局部对比度位置选择性。此外,在多尺度体系中,非线性电路在尺度空间中产生独特的最大响应,其中尺度直接与亮度转换的宽度相关。

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