A Novel Deep Neural Network Compression Model for Airport Object Detection
Article
Figures
Metrics
Preview PDF
Reference
Related
Cited by
Materials
Abstract:
A novel deep neural network compression model for airport object detection has been presented. This novel model aims at disadvantages of deep neural network, i.e. the complexity of the model and the great cost of calculation. According to the requirement of airport object detection, the model obtains temporal and spatial semantic rules from the uncompressed model. These spatial semantic rules are added to the model after parameter compression to assist the detection. The rules can improve the accuracy of the detection model in order to make up for the loss caused by parameter compression. The experiments show that the effect of the novel compression detection model is no worse than that of the uncompressed original model. Even some of the original model false detection can be eliminated through the prior knowledge.
LYU Zonglei, PAN Fuxi, XU Xianhong. A Novel Deep Neural Network Compression Model for Airport Object Detection[J]. Transactions of Nanjing University of Aeronautics & Astronautics,2020,37(4):562-573