Publication | Closed Access
Automatic detection of bike-riders without helmet using surveillance videos in real-time
164
Citations
17
References
2016
Year
Unknown Venue
Surveillance VideosEngineeringFeature DetectionObject SegmentationBiometricsVideo SurveillanceVisual SurveillanceImage AnalysisPattern RecognitionVideo Content AnalysisBackground SubtractionMachine VisionObject DetectionComputer ScienceComputer VisionMotion DetectionBinary ClassifierVideo AnalysisEye TrackingAutomatic DetectionMotion Analysis
In this paper, we propose an approach for automatic detection of bike-riders without helmet using surveillance videos in real time. The proposed approach first detects bike riders from surveillance video using background subtraction and object segmentation. Then it determines whether bike-rider is using a helmet or not using visual features and binary classifier. Also, we present a consolidation approach for violation reporting which helps in improving reliability of the proposed approach. In order to evaluate our approach, we have provided a performance comparison of three widely used feature representations namely histogram of oriented gradients (HOG), scale-invariant feature transform (SIFT), and local binary patterns (LBP) for classification. The experimental results show detection accuracy of 93.80% on the real world surveillance data. It has also been shown that proposed approach is computationally less expensive and performs in real-time with a processing time of 11.58 ms per frame.
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