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首页> 外文期刊>NeuroImage >Center-surround interaction with adaptive inhibition: a computational model for contour detection.
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Center-surround interaction with adaptive inhibition: a computational model for contour detection.

机译:中心与周围环境的相互作用与自适应抑制:轮廓检测的计算模型。

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The broad region outside the classical receptive field (CRF) of a neuron in the primary visual cortex (V1), namely non-CRF (nCRF), exerts robust modulatory effects on the responses to visual stimuli presented within the CRF. This modulating effect is mostly suppressive, which plays important roles in visual information processing. One possible role is to extract object contours from disorderly background textures. In this study, a two-scale based contour extraction model, inspired by the inhibitory interactions between CRF and nCRF of V1 neurons, is presented. The kernel idea is that the side and end subregions of nCRF work in different manners, i.e., while the strength of side inhibition is consistently calculated just based on the local features in the side regions at a fine spatial scale, the strength of end inhibition adaptively varies in accordance with the local features in both end and side regions at both fine and coarse scales. Computationally, the end regions exert weaker inhibition on CRF at the locations where a meaningful contour more likely exists in the local texture and stronger inhibition at the locations where the texture elements are mainly stochastic. Our results demonstrate that by introducing such an adaptive mechanism into the model, the non-meaningful texture elements are removed dramatically, and at the same time, the object contours are extracted effectively. Besides the superior performance in contour detection over other inhibition-based models, our model provides a better understanding of the roles of nCRF and has potential applications in computer vision and pattern recognition.
机译:初级视觉皮层(V1)中神经元的经典感受野(CRF)之外的较宽区域,即非CRF(nCRF),对CRF中对视觉刺激的反应产生强大的调节作用。这种调节作用主要是抑制性的,在视觉信息处理中起重要作用。一种可能的作用是从杂乱的背景纹理中提取对象轮廓。在这项研究中,基于V1神经元的CRF和nCRF之间的抑制性相互作用,提出了一种基于两尺度的轮廓提取模型。核心思想是nCRF的侧面和末端子区域以不同的方式工作,即,仅根据侧面区域的局部特征以良好的空间尺度一致地计算侧面抑制的强度时,末端抑制的强度会自适应地变化。根据端部和侧面区域的局部特征,在细和粗尺度上变化。通过计算,端部区域在局部纹理中更可能存在有意义的轮廓的位置对CRF的抑制作用较弱,而在纹理元素主要是随机的位置对CRF的抑制作用较强。我们的结果表明,通过将这种自适应机制引入模型,可以大幅度地去除无意义的纹理元素,并同时有效地提取对象轮廓。除了在轮廓检测方面优于其他基于抑制的模型外,我们的模型还提供了对nCRF角色的更好理解,并在计算机视觉和模式识别中具有潜在的应用。

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