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Improved YOLOv3 target detection based on boundary limit point features
LI Kewen, YANG Jiantao, HUANG Zongchao
Journal of Computer Applications    2023, 43 (1): 81-87.   DOI: 10.11772/j.issn.1001-9081.2021111999
Abstract302)   HTML11)    PDF (2069KB)(160)       Save
The problems of large number of targets, small scale and high-overlapping lead to low accuracy and difficulty in target detection. In order to improve the precision of target detection and avoid missed detection and false detection as much as possible, an improved YOLOv3 target detection algorithm based on boundary limit point features was proposed. Firstly, a boundary enhancement operator Border was introduced to adaptively extract boundary features from the limit points of the boundary to enhance the features of the existing points and improve the accuracy of target positioning. Then, the precision of target detection was further improved by increasing the target detection scale, refining the feature map, and enhancing the fusion of the feature image deep and shallow semantic information. Finally, based on the target instance characteristics in target detection and the improved network model, the Complete Intersection over Union (CIoU) function was introduced to improve the original YOLOv3 loss function, thereby improving the convergence speed and recall of the detection box. Experimental results show that compared with the original YOLOv3 target detection algorithm, the improved YOLOv3 target detection algorithm has the Average Precision increased by 3.9 percentage points , and has the detection speed similar to the original algorithm, verifying that it can effectively improve the target detection ability of models.
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Quality monitoring of steel products based on real-time data stream analysis
HUANG Zong ZHANG Xiao-long BIAN Xiao-yong
Journal of Computer Applications    2012, 32 (05): 1470-1473.  
Abstract932)      PDF (2080KB)(654)       Save
This paper proposed a method of product quality supervision based on real-time data analysis, concerning the common quality analysis and supervision problem in the process of steel production. Combined with real-time database and relational database, the method performed a real-time detection of steel production in both real-time supervision and off-line tracing. The main work of this paper was the 〖BP(〗implementation of on the 〖BP)〗collection of real-time data for real-time database, and the analysis schema given both real-time and relational data. The method proposed in this paper has been applied in several production lines of a steel factory and achieves good quality management.
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