Recognizing pedestrian’s unsafe behaviors in far-infrared imagery at night

•Recognizing pedestrian’s behaviors using thermal image from moving vehicle at night.•Designing the light convolutional neural networks with random forest classifier.•Generating the pedestrian’s unsafe behavior (PUB) dataset using thermal camera.•Behavior recognition accuracy is higher than that of...

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Veröffentlicht in:Infrared physics & technology 2016-05, Vol.76, p.261-270
Hauptverfasser: Lee, Eun Ju, Ko, Byoung Chul, Nam, Jae-Yeal
Format: Artikel
Sprache:eng
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Zusammenfassung:•Recognizing pedestrian’s behaviors using thermal image from moving vehicle at night.•Designing the light convolutional neural networks with random forest classifier.•Generating the pedestrian’s unsafe behavior (PUB) dataset using thermal camera.•Behavior recognition accuracy is higher than that of related algorithms. Pedestrian behavior recognition is important work for early accident prevention in advanced driver assistance system (ADAS). In particular, because most pedestrian-vehicle crashes are occurred from late of night to early of dawn, our study focus on recognizing unsafe behavior of pedestrians using thermal image captured from moving vehicle at night. For recognizing unsafe behavior, this study uses convolutional neural network (CNN) which shows high quality of recognition performance. However, because traditional CNN requires the very expensive training time and memory, we design the light CNN consisted of two convolutional layers and two subsampling layers for real-time processing of vehicle applications. In addition, we combine light CNN with boosted random forest (Boosted RF) classifier so that the output of CNN is not fully connected with the classifier but randomly connected with Boosted random forest. We named this CNN as randomly connected CNN (RC-CNN). The proposed method was successfully applied to the pedestrian unsafe behavior (PUB) dataset captured from far-infrared camera at night and its behavior recognition accuracy is confirmed to be higher than that of some algorithms related to CNNs, with a shorter processing time.
ISSN:1350-4495
1879-0275
DOI:10.1016/j.infrared.2016.03.006