Applying a visual attention mechanism to the problem of traffic sign recognition

Fabrício Augusto Rodrigues, H. Gomes
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引用次数: 2

Abstract

Driving a vehicle is a highly intensive visual information processing task in which traffic sign recognition plays an important role. Reports have shown that a great deal of the crashes at intersections and head-on collisions could be avoided if the driver had an additional half-second to react, and that inattentive drivers are the cause of most crashes. Therefore, this is an interesting field for the investigation of computer vision techniques. Within this context we are concerned with the automatic detection and classification of traffic signs in images acquired from a moving car. In order to reduce the amount of information to process, we employed a bottom-up visual attention mechanism to locate only the most promising points within each frame. Given a set of interest points, another module tries to match previously learnt traffic sign models against image regions centred on these points via a neural network approach. This paper focuses on the design aspects and preliminary results of the attention mechanism.
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视觉注意机制在交通标志识别中的应用
车辆驾驶是一项高度密集的视觉信息处理任务,交通标志识别在其中起着重要作用。报告显示,如果司机有额外的半秒反应时间,很多十字路口的撞车事故和正面碰撞都是可以避免的,而注意力不集中的司机是大多数撞车事故的原因。因此,这是研究计算机视觉技术的一个有趣的领域。在这种情况下,我们关注的是从移动的汽车中获取的图像中的交通标志的自动检测和分类。为了减少需要处理的信息量,我们采用了自下而上的视觉注意机制来定位每帧中最有希望的点。给定一组兴趣点,另一个模块试图通过神经网络方法将先前学习的交通标志模型与以这些点为中心的图像区域进行匹配。本文重点介绍了注意机制的设计方面和初步结果。
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