Title :
Incremental Online Object Learning in a Vehicular Radar-Vision Fusion Framework
Author :
Ji, Zhengping ; Luciw, Matthew ; Weng, Juyang ; Zeng, Shuqing
Author_Institution :
Michigan State Univ., East Lansing, MI, USA
fDate :
6/1/2011 12:00:00 AM
Abstract :
In this paper, we propose an object learning system that incorporates sensory information from an automotive radar system and a video camera. The radar system provides coarse attention for the focus of visual analysis on relatively small areas within the image plane. The attended visual areas are coded and learned by a three-layer neural network utilizing what is called in-place learning: Each neuron is responsible for the learning of its own processing characteristics within the connected network environment, through inhibitory and excitatory connections with other neurons. The modeled bottom-up, lateral, and top-down connections in the network enable sensory sparse coding, unsupervised learning, and supervised learning to occur concurrently. This paper is applied to learn two types of encountered objects in multiple outdoor driving settings. Cross-validation results show that the overall recognition accuracy is above 95% for the radar-attended window images. In comparison with the uncoded representation and purely unsupervised learning (without top-down connection), the proposed network improves the overall recognition rate by 15.93% and 6.35%, respectively. The proposed system is also compared favorably with other learning algorithms. The result indicates that our learning system is the only one that is fit for incremental and online object learning in a real-time driving environment.
Keywords :
radar computing; radar imaging; sensor fusion; unsupervised learning; video signal processing; automotive radar system; excitatory connection; in-place learning; incremental online object learning; inhibitory connection; real-time driving environment; sensory information; sensory sparse coding; supervised learning; three-layer neural network; unsupervised learning; vehicular radar-vision fusion framework; video camera; visual analysis; Artificial neural networks; Cameras; Neurons; Object recognition; Radar imaging; Vehicles; Biologically inspired neural network; intelligent vehicle system; object learning; sensor fusion; sparse coding;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2010.2094188