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Edge co-occurrences can account for rapid categorization of natural versus animal images

机译:边缘共同发生可以考虑到自然与动物图像的快速分类

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Making a judgment about the semantic category of a visual scene, such as whether it contains an animal, is typically assumed to involve high-level associative brain areas. Previous explanations require progressively analyzing the scene hierarchically at increasing levels of ion, from edge extraction to mid-level object recognition and then object categorization. Here we show that the statistics of edge co-occurrences alone are sufficient to perform a rough yet robust (translation, scale, and rotation invariant) scene categorization. We first extracted the edges from images using a scale-space analysis coupled with a sparse coding algorithm. We then computed the “association field” for different categories (natural, man-made, or containing an animal) by computing the statistics of edge co-occurrences. These differed strongly, with animal images having more curved configurations. We show that this geometry alone is sufficient for categorization, and that the pattern of errors made by humans is consistent with this procedure. Because these statistics could be measured as early as the primary visual cortex, the results challenge widely held assumptions about the flow of computations in the visual system. The results also suggest new algorithms for image classification and signal processing that exploit correlations between low-level structure and the underlying semantic category.
机译:判断关于视野的语义类别,例如它是否包含动物,通常涉及高级关联大脑区域。以前的解释需要在增加离子水平的情况下,从边缘提取到中级对象识别,然后对象分类来逐步分析场景。在这里,我们表明,单独的边缘共生发生的统计数据足以执行粗糙且稳健的(转换,缩放和旋转不变)场景分类。我们首先使用与稀疏编码算法耦合的刻度空间分析从图像中提取边缘。然后,我们通过计算边缘共同发生的统计数据来计算不同类别(自然,人造的或动物)的“关联领域”。这些强烈不同,动物图像具有更多弯曲的配置。我们表明,单独的几何形状足以进行分类,并且人类所做的错误模式与此过程一致。由于这些统计数据可以早于主要视觉皮质来测量,因此结果挑战了关于视觉系统中计算流的广泛假设。结果还建议了用于图像分类的新算法和信号处理,该信号处理利用低级结构与底层语义类别之间的相关性。

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