Vehicle Detection in Urban Traffic Surveillance Images Based on Convolutional Neural Networks with Feature Concatenation
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Title
Vehicle Detection in Urban Traffic Surveillance Images Based on Convolutional Neural Networks with Feature Concatenation
Authors
Keywords
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Journal
SENSORS
Volume 19, Issue 3, Pages 594
Publisher
MDPI AG
Online
2019-02-01
DOI
10.3390/s19030594
References
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