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What are the visual features underlying human versus machine vision?

机译:人类与机器视觉相关的视觉功能是什么?

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Although Deep Convolutional Networks (DCNs) are approaching the accuracy of human observers at object recognition, it is unknown whether they leverage similar visual representations to achieve this performance. To address this, we introduce Clicktionary, a web-based game for identifying visual features used by human observers during object recognition. Importance maps derived from the game are consistent across participants and uncorrelated with image saliency measures. These results suggest that Clicktionary identifies image regions that are meaningful and diagnostic for object recognition but different than those driving eye movements. Surprisingly, Clicktionary importance maps are only weakly correlated with relevance maps derived from DCNs trained for object recognition. Our study demonstrates that the narrowing gap between the object recognition accuracy of human observers and DCNs obscures distinct visual strategies used by each to achieve this performance.
机译:虽然深度卷积网络(DCNS)在对象识别下接近人类观察者的准确性,但是他们是未知他们是否利用类似的视觉表示来实现这种性能。为了解决这个问题,我们引入了基于Web的游戏,用于识别人类观察者在物体识别期间使用的可视特征。源自游戏的重要性地图跨参与者一致,并不相关,具有图像显着措施。这些结果表明,ClickTionary识别对象识别的有意义和诊断的图像区域,但与驾驶眼球运动不同。令人惊讶的是,Click的重要性地图与从训练有素识别的DCNS派生的相关性映射略微相关。我们的研究表明,人类观察者和DCN的物体识别准确性之间的缩小差距模糊了每个人使用的不同视觉策略,以实现这种性能。

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