基于卷积神经网络的视觉定向不均匀性

S. Zhong, Jiaxin Wu, Yingying Zhu, Peiqi Liu, Jianmin Jiang, Yan Liu
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引用次数: 1

摘要

定向视觉刺激的细节在水平或垂直位置比倾斜位置更容易分辨。这种“斜向效应”已经在许多研究中得到了研究和证实,包括行为研究、神经生理学和神经影像学的发现。虽然“倾斜效应”在许多领域都有影响,但很少有研究将其纳入计算模型。在本文中,我们尝试探索基于卷积神经网络(cnn)在图像识别中的视觉方向不均匀性。我们验证了视觉方向非均匀性cnn在不同的数据集上可以获得相当的性能和更高的计算效率。我们也可以得出结论,与基数信息相比,倾斜信息在自然彩色图像识别中的作用确实较小。通过对所提出的图像识别模型的探索,我们对视觉方向的非均匀性有了更多的了解。它还说明了将视觉方向的非均匀性与其他计算模型相结合的广泛机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Orientation Inhomogeneity Based Convolutional Neural Networks
The details of oriented visual stimuli are better resolved when they are horizontal or vertical rather than oblique. This "oblique effect" has been researched and confirmed in numerous research studies, including behavioral studies and neurophysiological and neuroimaging findings. Although the "oblique effect" has influence in many fields, little research integrated it into computational models. In this paper, we try to explore this inhomogeneity of visual orientation based on Convolutional neural networks (CNNs) in image recognition. We validate that visual orientation inhomogeneity CNNs can achieve comparable performance with higher computational efficiency on various datasets. We can also get the conclusion that, compared with the cardinal information, oblique information is indeed less useful in natural color image recognition. Through the exploration of the proposed model on image recognition, we gain more understanding of the inhomogeneity of visual orientation. It also illuminates a wide range of opportunities for integrating the inhomogeneity of visual orientation with other computational models.
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