Title
Efficient power component identification with long short-term memory and deep neural network
Abstract
This paper tackles a recent challenge in patrol image processing on how to improve the identification accuracy for power component, especially for the scenarios including many interference objects. Our proposed method can fully use the patrol image information from live work, and it is thus different from traditional power component identification methods. Firstly, we use long short-term memory networks to synthesize the context information in a convolutional neural network. Then, we constructed the Mask LSTM-CNN model by combining the existing Mask R-CNN method and the context information. Further, by extracting the specific features belonging to the power components, we design an optimization algorithm to optimize the parameters of Mask LSTM-CNN model. Our solution is competitive in the sense that the power component is still identified accurately even if the patrol images contain much interference information. Extensive experiments show that the proposed scheme can improve the accuracy of component recognition and has an excellent anti-interference ability. Comparing with the existing R-FCN model and Faster R-CNN model, the proposed method demonstrates a significantly superior detection performance, and the average recognition accuracy is improved from 8 to 11%.
Year
DOI
Venue
2018
10.1186/s13640-018-0337-z
EURASIP Journal on Image and Video Processing
Keywords
Field
DocType
Power component identification,Long short-term memory,Convolutional neural network,Anti-interference,Live work inspection
Pattern recognition,Convolutional neural network,Computer science,Image processing,Long short term memory,Interference (wave propagation),Artificial intelligence,Optimization algorithm,Biometrics,Artificial neural network
Journal
Volume
Issue
ISSN
2018
1
1687-5281
Citations 
PageRank 
References 
0
0.34
20
Authors
4
Name
Order
Citations
PageRank
Jingsheng Lei169169.87
Wenbin Shi200.34
Zhichao Lei300.34
Fengyong Li4579.10