Vehicle and Pedestrian Detection Applications

Kaiche Pranali R., Khule R. S.

Abstract


This paper describes a target detection system on road environments based on Support Vec-tor Machine (SVM) and monocular vision. The fi-nal goal is to provide pedestrian-to-car and car-to-car time gap. The challenge is to use a single camera as input, in order to achieve a low cost final system that meets the requirements needed to undertake serial production in automotive industry. The basic fea-ture of the detected objects are first located in the image using vision and then combined with a SVM- based classifier. An intelligent learning approach is proposed in order to better deal with objects vari-ability, illumination conditions, partial occlusions and rotations. A large database containing thousands of object examples has been created for learning pur-poses. The classifier is trained using SVM in order to be able to classify pedestrians, cars and trucks. In the paper, we present and discuss the results achieved up to date in real traffic conditions.


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Copyright (c) 2016 Kaiche Pranali R., Khule R. S.

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