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Scientific Article details

Title Urban management image classification approach based on deep learning
ID_Doc 44370
Authors Kang, QQ; Ding, X
Title Urban management image classification approach based on deep learning
Year 2021
Published Journal Of Ambient Intelligence And Smart Environments, 13, 5
DOI 10.3233/AIS-210609
Abstract Based on the case images in the smart city management system, the advantage of deep learning is used to learn image features on its own, an improved deep convolutional neural network algorithm is proposed in this paper, and the algorithm is used to improve the smart city management system (hereinafter referred to as "Smart City Management"). These case images are quickly and accurately classified, the automatic classification of cases is completed in the city management system. ZCA (Zero-phase Component Analysis)-whitening is used to reduce the correlation between image data features, an eight-layer convolutional neural network model is built to classify the whitened images, and rectified linear unit (ReLU) is used in the convolutional layer to accelerate the training process, the dropout technology is used in the pooling layer, the algorithm is prevented from overfitting. Back Propagation (BP) algorithm is used for optimization in the network fine-tuning stage, the robustness of the algorithm is improved. Based on the above method, the two types of case images of road traffic and city appearance environment were subjected to two classification experiments. The accuracy has reached 97.5%, and the F1-Score has reached 0.98. The performance exceeded LSVM (Langrangian Support Vector Machine), SAE (Sparse autoencoder), and traditional CNN (Convolution Neural Network). At the same time, this method conducts four-classification experiments on four types of cases: electric vehicles, littering, illegal parking of motor vehicles, and mess around garbage bins. The accuracy is 90.5%, and the F1-Score is 0.91. The performance still exceeds LSVM, SAE and traditional CNN and other methods.
Author Keywords Urban management; image classification; Convolution Neural Network (CNN); Zero-phase Component Analysis (ZCA)-whitening; dropout; Rectified Linear Unit (ReLU)
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000699906200002
WoS Category Computer Science, Artificial Intelligence; Computer Science, Information Systems; Telecommunications
Research Area Computer Science; Telecommunications
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