Journals
  Publication Years
  Keywords
Search within results Open Search
Please wait a minute...
For Selected: Toggle Thumbnails
Light-weight image fusion method based on SqueezeNet
WANG Jixiao, LI Yang, WANG Jiabao, MIAO Zhuang, ZHANG Yangshuo
Journal of Computer Applications    2020, 40 (3): 837-841.   DOI: 10.11772/j.issn.1001-9081.2019081378
Abstract459)      PDF (855KB)(434)       Save
The existing deep learning based infrared and visible image fusion methods have too many parameters and require large amounts of computing resources and memory. These methods cannot meet the deployment demand of resource constrained edge devices such as cell phones and embedded devices. In order to address these problems, a light-weight image fusion method based on SqueezeNet was proposed. SqueezeNet was used to extract image features, then the weight map was obtained by these features, and the weighted fusion was performed, finally the fused image was generated. By comparing with the ResNet50 method, it is found that the proposed method compresses the model size and network parameter amount to 1/21 and 1/204 respectively, and improves the running speed to 5 times while maintaining the quality of fused images. The experimental results demonstrate that the proposed method has better fusion effect compared to existing traditional methods as well as reduces the size of fusion model and accelerates the fusion speed.
Reference | Related Articles | Metrics
Pedestrian detection method based on Movidius neural computing stick
ZHANG Yangshuo, MIAO Zhuang, WANG Jiabao, LI Yang
Journal of Computer Applications    2019, 39 (8): 2230-2234.   DOI: 10.11772/j.issn.1001-9081.2018122595
Abstract694)      PDF (729KB)(437)       Save
Movidius neural computing stick is a USB-based deep learning inference tool and a stand-alone artificial intelligence accelerator that provides dedicated deep neural network acceleration for a wide range of mobile and embedded vision devices. For the embedded application of deep learning, a near real-time pedestrian target detection method based on Movidius neural computing stick was realized. Firstly, the model size and calculation were adapted to the requirements of the embedded device by improving the RefineDet target detection network structure. Then, the model was retrained on the pedestrian detection dataset and deployed on the Raspberry Pi equipped with Movidius neural computing stick. Finally, the model was tested in the actual environment, and the algorithm achieved an average processing speed of 4 frames per second. Experimental results show that based on Movidius neural computing stick, the near real-time pedestrian detection task can be completed on the Raspberry Pi with limited computing resources.
Reference | Related Articles | Metrics
Person re-identification based on feature fusion and kernel local Fisher discriminant analysis
ZHANG Gengning, WANG Jiabao, LI Yang, MIAO Zhuang, ZHANG Yafei, LI Hang
Journal of Computer Applications    2016, 36 (9): 2597-2600.   DOI: 10.11772/j.issn.1001-9081.2016.09.2597
Abstract706)      PDF (785KB)(334)       Save
Feature representation and metric learning are fundamental problems in person re-identification. In the feature representation, the existing methods cannot describe the pedestrian well for massive variations in viewpoint. In order to solve this problem, the Color Name (CN) feature was combined with the color and texture features. To extract histograms for image features, the image was divided into zones and blocks. In the metric learning, the traditional kernel Local Fisher Discriminant Analysis (kLFDA) method mapped all query images into the same feature space, which disregards the importance of different regions of the query image. For this reason, the features were grouped by region based on the kLFDA, and the importance of different regions of the image was described by the method of Query-Adaptive Late Fusion (QALF). Experimental results on the VIPeR and iLIDS datasets show that the extracted features are superior to the original feature; meanwhile, the improved method of metric learning can effectively increase the accuracy of person re-identification.
Reference | Related Articles | Metrics
Improved Dezert-Smarandache theory and its application in target recognition
MIAO Zhuang,CHENG Yong-mei,LIANG Yan,PAN Quan,YANG Yang
Journal of Computer Applications    2005, 25 (09): 2044-2046.   DOI: 10.3724/SP.J.1087.2005.02044
Abstract941)      PDF (178KB)(1074)       Save
The Dezert-Smarandache Theory(DSmT) is more desirable than the D-S Theory in the case of solving conflicting evidence.However,the mass function of the main focal element is difficult to converge in many cases while applying DSmT.The new mass values were reconstructed to solve this problem.An improved DSmT was proposed so that the mass value of main element could quickly converge.Simulation results of target recognition based on 2D sequence images of airplanes demonstrate that the revised mass value of main focal element has better convergence to the desired threshold and consequently the task of target recognition is accomplished more precisely.
Related Articles | Metrics