Comparison of face detection and image classification for detecting front seat passengers in vehicles

Y. Artan, P. Paul, F. Perronnin, A. Burry
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引用次数: 6

Abstract

Due to the high volume of traffic on modern roadways, transportation agencies have proposed High Occupancy Vehicle (HOV) lanes and High Occupancy Tolling (HOT) lanes to promote car pooling. However, enforcement of the rules of these lanes is currently performed by roadside enforcement officers using visual observation. Manual roadside enforcement is known to be inefficient, costly, potentially dangerous, and ultimately ineffective. Violation rates up to 50%-80% have been reported, while manual enforcement rates of less than 10% are typical. Therefore, there is a need for automated vehicle occupancy detection to support HOV/HOT lane enforcement. A key component of determining vehicle occupancy is to determine whether or not the vehicle's front passenger seat is occupied. In this paper, we examine two methods of determining vehicle front seat occupancy using a near infrared (NIR) camera system pointed at the vehicle's front windshield. The first method examines a state-of-the-art deformable part model (DPM) based face detection system that is robust to facial pose. The second method examines state-of-the-art local aggregation based image classification using bag-of-visual-words (BOW) and Fisher vectors (FV). A dataset of 3000 images was collected on a public roadway and is used to perform the comparison. From these experiments it is clear that the image classification approach is superior for this problem.
车辆前座乘客人脸检测与图像分类的比较
由于现代道路上的交通量很大,交通运输机构提出了高占用车辆(HOV)车道和高占用收费(HOT)车道来促进拼车。然而,这些车道规则的执行目前是由路边执法人员通过目视观察来执行的。众所周知,人工路边执法效率低、成本高、有潜在危险,而且最终无效。据报道,违规率高达50%-80%,而人工执法率通常低于10%。因此,需要自动车辆占用检测来支持HOV/HOT车道执法。确定车辆占用率的一个关键组成部分是确定车辆的前排乘客座位是否被占用。在本文中,我们研究了两种确定车辆前座占用率的方法,使用近红外(NIR)相机系统指向车辆的前挡风玻璃。第一种方法研究了一种基于最先进的可变形部件模型(DPM)的面部检测系统,该系统对面部姿势具有鲁棒性。第二种方法使用视觉词袋(BOW)和费雪向量(FV)检查最先进的基于局部聚合的图像分类。在公共道路上收集了3000张图像的数据集,并用于进行比较。从这些实验中可以清楚地看出,图像分类方法在这个问题上是优越的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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