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Abstract:
It is prevailing to apply the Deep learning model to several problems related to autonomous driving. Usually, these solutions depend on a large scale of networks, especially the Convolution Neutral Network(CNN), requiring some specific databases of real image samples targeted at the certain issue for some proper trainings. The pursue for the recognition itself is not always necessary in the autonomous driving context if the experiment ignores the speed and the accuracy of the recognition of these traffic signs since these autonomous driving vehicles will not have a plenty of time on the road, just as in the laboratory, to recognize what the traffic sign in the camera is. In order to improve the efficiency and the accuracy of the recognition of these traffic signs, this paper proposes a novel CNN-based algorithm, which contains more convolution layers and fully-connected layers. In this case, in order to meet the demand of the novel CNN structure taken in the experiment, the dataset has also been modified ahead of the experiment, which has been called the preprocessing operation. The dataset which has been chosen as the dataset for this experiment is the German Traffic Sign Benchmarks (GTSRB). The dataset generation method has also been used in the experiment which requires only (i) common natural images, and (ii) templates of the traffic signs, which are created to illustrate the meaning and the category of a traffic sign. The generated training dataset is shown to be effective when using the novel CNN structure proposed by this paper. The experiment result has achieved to 0.069783 oftrain loss and 0.030411 ofvalid loss. The experiment surprisingly shows that CNN can be trained with data generation methods to get a dramatically more efficient and accurate result which is usually ignored in the formal mainstream papers © 2019 IEEE.
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Year: 2019
Page: 907-914
Language: English
Cited Count:
WoS CC Cited Count: 0
SCOPUS Cited Count: 3
ESI Highly Cited Papers on the List: 0 Unfold All
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Chinese Cited Count:
30 Days PV: 3
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