视觉引导下反映感知类歧义的图像分类

Tatsuya Ishibashi, Yusuke Sugano, Y. Matsushita
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摘要

尽管机器学习和深度神经网络取得了进步,但机器和人类图像理解之间仍然存在巨大差距。其中一个原因是用于标记训练图像的注释过程。在大多数图像分类任务中,某些图像类别之间存在着基本的模糊性,并且从非常明显的情况到模糊的情况,潜在的类概率是不同的。然而,目前的机器学习系统和应用通常使用离散的注释过程,训练标签不能反映这种模糊性。为了解决这个问题,我们提出了一个新的图像标注框架,其中标注包含了人类的注视行为。在该框架中,使用注视行为来预测图像标注难度。然后使用由预测难度定义的样本权重来训练图像分类器。我们证明了该方法在四类图像分类任务上的有效性。
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Gaze-guided Image Classification for Reflecting Perceptual Class Ambiguity
Despite advances in machine learning and deep neural networks, there is still a huge gap between machine and human image understanding. One of the causes is the annotation process used to label training images. In most image categorization tasks, there is a fundamental ambiguity between some image categories and the underlying class probability differs from very obvious cases to ambiguous ones. However, current machine learning systems and applications usually work with discrete annotation processes and the training labels do not reflect this ambiguity. To address this issue, we propose an new image annotation framework where labeling incorporates human gaze behavior. In this framework, gaze behavior is used to predict image labeling difficulty. The image classifier is then trained with sample weights defined by the predicted difficulty. We demonstrate our approach's effectiveness on four-class image classification tasks.
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