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利用局部非彩色线索区分阴影与表面边界。

Distinguishing shadows from surface boundaries using local achromatic cues.

机构信息

Computational Perception Laboratory, FGCU Computational Facility, & Department of Psychology, Florida Gulf Coast University, Fort Myers, Florida, United States of America.

Computational Perception Laboratory & Department of Software Engineering, Florida Gulf Coast University, Fort Myers, Florida, United States of America.

出版信息

PLoS Comput Biol. 2022 Sep 14;18(9):e1010473. doi: 10.1371/journal.pcbi.1010473. eCollection 2022 Sep.

Abstract

In order to accurately parse the visual scene into distinct surfaces, it is essential to determine whether a local luminance edge is caused by a boundary between two surfaces or a shadow cast across a single surface. Previous studies have demonstrated that local chromatic cues may help to distinguish edges caused by shadows from those caused by surface boundaries, but the information potentially available in local achromatic cues like contrast, texture, and penumbral blur remains poorly understood. In this study, we develop and analyze a large database of hand-labeled achromatic shadow edges to better understand what image properties distinguish them from occlusion edges. We find that both the highest contrast as well as the lowest contrast edges are more likely to be occlusions than shadows, extending previous observations based on a more limited image set. We also find that contrast cues alone can reliably distinguish the two edge categories with nearly 70% accuracy at 40x40 resolution. Logistic regression on a Gabor Filter bank (GFB) modeling a population of V1 simple cells separates the categories with nearly 80% accuracy, and furthermore exhibits tuning to penumbral blur. A Filter-Rectify Filter (FRF) style neural network extending the GFB model performed at better than 80% accuracy, and exhibited blur tuning and greater sensitivity to texture differences. We compare human performance on our edge classification task to that of the FRF and GFB models, finding the best human observers attaining the same performance as the machine classifiers. Several analyses demonstrate both classifiers exhibit significant positive correlation with human behavior, although we find a slightly better agreement on an image-by-image basis between human performance and the FRF model than the GFB model, suggesting an important role for texture.

摘要

为了准确地将视觉场景解析为不同的表面,确定局部亮度边缘是由两个表面之间的边界引起的还是由单个表面上的阴影引起的至关重要。先前的研究表明,局部色度线索可能有助于区分由阴影引起的边缘和由表面边界引起的边缘,但局部非彩色线索(如对比度、纹理和半影模糊)中潜在的信息仍然了解甚少。在这项研究中,我们开发并分析了一个大型的手标记非彩色阴影边缘数据库,以更好地了解区分它们与遮挡边缘的图像属性。我们发现,最高对比度和最低对比度边缘都更有可能是遮挡而不是阴影,这扩展了基于更有限图像集的先前观察结果。我们还发现,仅对比度线索就可以可靠地区分这两个边缘类别,在 40x40 分辨率下准确率接近 70%。基于对 V1 简单细胞群体进行建模的 Gabor 滤波器组 (GFB) 的逻辑回归可以将类别区分开来,准确率接近 80%,并且表现出对半影模糊的调谐。扩展 GFB 模型的 Filter-Rectify Filter (FRF) 样式神经网络的准确率超过 80%,并且表现出模糊调谐以及对纹理差异的更高敏感性。我们将人类在我们的边缘分类任务中的表现与 FRF 和 GFB 模型进行了比较,发现表现最好的人类观察者达到了与机器分类器相同的性能。几项分析表明,两种分类器都与人类行为表现出显著的正相关,尽管我们发现人类表现与 FRF 模型之间的图像对图像基础上的一致性略高于 GFB 模型,这表明纹理的重要作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/77e6/9512248/0b2fa9c1508a/pcbi.1010473.g001.jpg

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