Abstract
Vision-based vehicle detection is the most basic and important technology in advanced driver assistance systems. In this paper, we propose a vehicle detection framework using selective multi-stage features in convolutional neural networks (CNNs) to improve vehicle detection performance. A 10-layer CNN model was designed and visualization techniques were used to selectively extract features from the activation feature map, called selective multi-stage features. The proposed features contain characteristic vehicle image information and are more robust than traditional features against noise. We trained the AdaBoost algorithmusing these features to implement a vehicle detector. The experimental results verified that the proposed vehicle detection framework exhibited better performance than previous frameworks.
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CITATION STYLE
Lee, W. J., Kim, D. W., Kang, T. K., & Lim, M. T. (2018). Convolution neural network with selective multi-stage feature fusion: Case study on vehicle rear detection. Applied Sciences (Switzerland), 8(12). https://doi.org/10.3390/app8122468
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