Title
First-person-vision-based driver assistance system
Abstract
This paper presents a driver assistance system to monitor the driver driving behavior by applying the so-called “First-Person Vision” (FPV) technology. It consists of two modules: the scene classification and the driver viewing angle estimation. First, we use “bag of words” image classification approach based on FAST and BRIEF feature descriptor in the dataset. Second, we establish the “vocabulary dictionary” to encode an input image as a feature vector. Third, we apply SVM classifier to detect whether the driver's view is inside or outside scene of a vehicle. Finally, we estimate the driver viewing angle estimation based on FPV and the windshield-mounted camera. In the experiments, we illustrate the effectiveness of our system.
Year
DOI
Venue
2014
10.1109/ICALIP.2014.7009793
Audio, Language and Image Processing
Keywords
DocType
Citations 
behavioural sciences,cameras,driver information systems,gaze tracking,image classification,image coding,support vector machines,vectors,brief feature descriptor,fast feature descriptor,fpv technology,svm classifier,bag of word image classification approach,driver driving behavior,driver viewing angle estimation,feature vector,first-person-vision-based driver assistance system,input image encoding,scene classification,vocabulary dictionary,windshield-mounted camera,brief,bag of word (bow),fast,first-person vision(fpv),svm,erbium,world wide web
Conference
1
PageRank 
References 
Authors
0.35
14
3
Name
Order
Citations
PageRank
Kuang-Yu Liu110.35
Shih-Chung Hsu210.35
Chung-Lin Huang354037.61