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Human behavior recognition algorithm based on three-dimensional residual dense network
GUO Mingxiang, SONG Quanjun, XU Zhannan, DONG Jun, XIE Chengjun
Journal of Computer Applications    2019, 39 (12): 3482-3489.   DOI: 10.11772/j.issn.1001-9081.2019061056
Abstract406)      PDF (1300KB)(236)       Save
Concerning the problem that the existing algorithm for human behavior recognition cannot fully utilize the multi-level spatio-temporal information of network, a human behavior recognition algorithm based on three-dimensional residual dense network was proposed. Firstly, the proposed network adopted the three-dimensional residual dense blocks as the building blocks, these blocks extracted the hierarchical features of human behavior through the densely-connected convolutional layer. Secondly, the local dense features of human behavior were learned by the local feature aggregation adaptive method. Thirdly, residual connection module was adopted to facilitate the flow of feature information and mitigate the difficulty of training. Finally, after realizing the multi-level local feature extraction by concatenating multiple three-dimensional residual dense blocks, the aggregation adaptive method for global feature was proposed to learn the features of all network layers for realizing human behavior recognition. In conclusion, the proposed algorithm has improved the extraction of network multi-level spatio-temporal features and the features with high discrimination are learned by local and global feature aggregation, which enhances the expression ability of model. The experimental results on benchmark datasets KTH and UCF-101 show that, the recognition rate (top-1 recognition accuracy) of the proposed algorithm can achieve 93.52% and 57.35% respectively, which outperforms that of Three-Dimensional Convolutional neural network (C3D) algorithm by 3.93 percentage points and 13.91 percentage points respectively. The proposed algorithm framework has excellent robustness and migration learning ability, and can effectively handle multiple video behavior recognition tasks.
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Character recognition of license plate based on convolution neural network
DONG Junfei, ZHENG Bochuan, YANG Zejing
Journal of Computer Applications    2017, 37 (7): 2014-2018.   DOI: 10.11772/j.issn.1001-9081.2017.07.2014
Abstract1631)      PDF (792KB)(1431)       Save
Character recognition of license plate is an important component of an intelligent license plate recognition system. Both the number of categories and the complexity of background of license plate character affected the correct recognition rate. A character recognition method of license plate based on Convolution Neural Network (CNN) was proposed for improving the correct recognition rate. Firstly, the simple shape structures of license plate characters were obtained through image preprocessing which included image size normalization, image denoising, image binarization, image thinning, and character centering. Secondly, the preprocessed character images were trained and recognized by the proposed CNN model. The experimental results show that the correct recognition rate of the proposed method can reach 99.96%, which is better than the other three compared methods. It is demonstrated that the proposed CNN method has good recognition performance for the license plate character, and can meet the practical application requirements.
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Design and implementation of ECC software and ECC card
DONG Jun-wu,ZOU Hou-wen,PEI Ding-yi
Journal of Computer Applications    2005, 25 (11): 2549-2553.  
Abstract1432)      PDF (1026KB)(1453)       Save
The design and implementation of elliptic curve cryptography in software and low-level environment such as mono-chip were introduced,including the high-performance software of elliptic curve cryptography,the software of SEA algorithm generating secure elliptic curve,and the elliptic curve cryptographic card with USB interface.It is shown that the elliptic curve cryptography system can be implemented both in software and in the low-level environment such as smart card or mono-chips,and hence can be used in reality.
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