基于深度神经网络的道路车辆检测与分类

Zhaojin Zhang, Cunlu Xu, W. Feng
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引用次数: 22

摘要

深度学习是近年来在机器学习领域发展起来的一种多层神经网络学习算法。本文首先分析了深度学习在特征提取方面的优势。针对浅层学习中特征维数过多导致特征表达能力不足和维数诅咒的问题,本文提出利用深度学习通过其给定的层结构从低层次特征中提取高层次特征。其次,将深度学习算法应用于道路车辆检测。在神经网络等传统方法的基础上,进一步研究了深度学习结构,提高了特征提取和分类识别的性能。并在Matlab软件中进行了测试。实验结果表明,随着数据量的增加,平均误差和误分类率逐渐降低,表明基于神经网络的算法具有较好的深度学习优越性和适应性。最后,对算法的改进提出了一些建议,并对深度学习在机器学习和人工智能领域的发展方向进行了展望。
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Road vehicle detection and classification based on Deep Neural Network
The deep learning is a growing multi-layer neural network learning algorithm in the field of machine learning in recent years. Firstly, this paper analyzes the superiority of the deep learning at the aspect of feature extraction. Aimed at the lack of feature expression capacity and curse of dimensionality results from excessive feature dimensions of shallow learning, this paper proposes that using deep learning can extract high-lever features from low-lever features though its given layer structure. Secondly, the deep learning algorithm is applied in the case of road vehicle detection. Based on the traditional method, such as neural network the deep learning structure is further studied to increase the performance of feature extraction and classification recognition. Also, some tests are run in the Matlab software. The tests results show that with the increasing the amount of the data, the mean error and misclassification rate gradually decrease, so this algorithm based on the neural network has good superiority and adaptability of the deep learning. Finally, this paper proposes some suggestions for the improvement of the algorithm and prospects the development direction of the deep learning in the field of machine learning and artificial intelligence.
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