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Pedestrian detectability: Predicting human perception performance with machine vision

机译:行人可检测性:通过机器视觉预测人类的感知性能

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How likely is it that a driver notices a person standing on the side of the road? In this paper we introduce the concept of pedestrian detectability. It is a measure of how probable it is that a human observer perceives pedestrians in an image. We acquire a dataset of pedestrians with their associated detectabilities in a rapid detection experiment using images of street scenes. On this dataset we learn a regression function that allows us to predict human detectabilities from an optimized set of image and contextual features. We exploit this function to infer the optimal focus of attention for pedestrian detection. With this combination of human perception and machine vision we propose a method we deem useful for the optimization of Human-Machine-Interfaces in driver assistance systems.
机译:驾驶员发现站在路边的人的可能性有多大?在本文中,我们介绍了行人可检测性的概念。这是人类观察者在图像中感知行人的可能性的一种度量。我们使用街景图像在快速检测实验中获取了行人及其相关检测能力的数据集。在此数据集上,我们学习了回归函数,该函数使我们能够从一组优化的图像和上下文特征中预测人类的可检测性。我们利用此功能来推断行人检测的最佳关注焦点。结合人类感知和机器视觉,我们提出了一种我们认为对驾驶员辅助系统中人机界面的优化有用的方法。

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