Title
On-road vehicle detection based on effective hypothesis generation
Abstract
This paper proposes an effective hypothesis generation for detection multi-vehicle using a monocular camera fixed on the host vehicle. In hypothesis generation (HG) step, we use linear model between the distance and vehicle size by using recursive least square. It generates effective image patches and improves the detection performance. In addition, it also reduces the computation time compared with sliding-window approach. In hypothesis verification (HV) step, we use the Histogram of Oriented Gradient (HOG) feature and Support Vector Machine (SVM). In our experiment, Caltech and IR datasets are used. The experimental result shows the improvement of running time and detection performance.
Year
DOI
Venue
2013
10.1109/ROMAN.2013.6628455
RO-MAN
Keywords
Field
DocType
detection performance,on-road vehicle detection,recursive least square,vehicle size,linear model,road vehicles,monocular camera,caltech datasets,traffic engineering computing,ir datasets,running time,svm,hypothesis verification step,computation time,least squares approximations,support vector machine,hv step,sliding-window approach,gradient methods,object detection,host vehicle,hg step,histogram of oriented gradient feature,recursive estimation,effective hypothesis generation,image patches,support vector machines,multi-vehicle detection,hog feature
Least squares,Histogram,Object detection,Computer vision,Linear model,Simulation,Computer science,Support vector machine,Vehicle detection,Artificial intelligence,Recursion,Computation
Conference
ISSN
Citations 
PageRank 
1944-9445
1
0.36
References 
Authors
8
4
Name
Order
Citations
PageRank
Jisu Kim121128.11
Jeonghyun Baek2265.31
Dong Yeop Kim3104.34
Euntai Kim41472109.36