Tracking-based detection of driving distraction from vehicular interior video

Tashrif Billah, S. Rahman
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引用次数: 10

Abstract

Distraction during driving is a growing concern for global road safety. Different activities impertinent to driving hinder the concentration of driver on road and often cause substantial damage to life and property. For making driving safe, an algorithm is proposed in this paper that is capable of detecting distraction during driving. The proposed algorithm tracks key body parts of the driver in video captured by a front camera. Euclidean distances between the tracking trajectories of body parts are used as representative features that characterize the state of distraction or attention of a driver. The well-known K-nearest neighbor classifier is applied for detecting distraction from the features extracted from body parts. The proposed method is compared with existing methods implementing tracking-based human action identification to corroborate its improved performance.
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基于跟踪的车辆内部视频驾驶分心检测
驾驶时分心是全球道路安全日益关注的问题。各种与驾驶无关的活动阻碍了驾驶员在道路上的注意力,往往造成重大的生命财产损失。为了保证行车安全,本文提出了一种能够检测行车分心的算法。该算法通过前置摄像头拍摄的视频跟踪驾驶员的关键身体部位。身体部位跟踪轨迹之间的欧几里得距离被用作表征驾驶员分心或注意力状态的代表性特征。众所周知的k近邻分类器被用于检测从身体部位提取的特征的分心。将该方法与现有的基于跟踪的人体动作识别方法进行了比较,验证了其改进的性能。
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