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Detection Algorithm of Laboratory Personnel Irregularities Based on Improved YOLOv7
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作者 Yongliang Yang Linghua Xu +2 位作者 Maolin Luo Xiao Wang Min Cao 《Computers, Materials & Continua》 SCIE EI 2024年第2期2741-2765,共25页
Due to the complex environment of the university laboratory,personnel flow intensive,personnel irregular behavior is easy to cause security risks.Monitoring using mainstream detection algorithms suffers from low detec... Due to the complex environment of the university laboratory,personnel flow intensive,personnel irregular behavior is easy to cause security risks.Monitoring using mainstream detection algorithms suffers from low detection accuracy and slow speed.Therefore,the current management of personnel behavior mainly relies on institutional constraints,education and training,on-site supervision,etc.,which is time-consuming and ineffective.Given the above situation,this paper proposes an improved You Only Look Once version 7(YOLOv7)to achieve the purpose of quickly detecting irregular behaviors of laboratory personnel while ensuring high detection accuracy.First,to better capture the shape features of the target,deformable convolutional networks(DCN)is used in the backbone part of the model to replace the traditional convolution to improve the detection accuracy and speed.Second,to enhance the extraction of important features and suppress useless features,this paper proposes a new convolutional block attention module_efficient channel attention(CBAM_E)for embedding the neck network to improve the model’s ability to extract features from complex scenes.Finally,to reduce the influence of angle factor and bounding box regression accuracy,this paper proposes a newα-SCYLLA intersection over union(α-SIoU)instead of the complete intersection over union(CIoU),which improves the regression accuracy while increasing the convergence speed.Comparison experiments on public and homemade datasets show that the improved algorithm outperforms the original algorithm in all evaluation indexes,with an increase of 2.92%in the precision rate,4.14%in the recall rate,0.0356 in the weighted harmonic mean,3.60%in the mAP@0.5 value,and a reduction in the number of parameters and complexity.Compared with the mainstream algorithm,the improved algorithm has higher detection accuracy,faster convergence speed,and better actual recognition effect,indicating the effectiveness of the improved algorithm in this paper and its potential for practical application in laboratory scenarios. 展开更多
关键词 university laboratory personnel behavior YOLOv7 deformable convolutional networks attention module intersection over union
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Northwestern Polytechnical University State Key Laboratory of Solidification Processing
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《China Foundry》 SCIE CAS 2005年第1期75-75,共1页
关键词 Northwestern Polytechnical university State Key Laboratory of Solidification Processing
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Use of Interspecific Hybrids in the Texas A&M University Cotton Improvement Laboratory
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作者 HAGUE Steve SMITH C Wayne 《棉花学报》 CSCD 北大核心 2008年第S1期91-,共1页
Integrating alleles from Gossypium species into G.hirsutum is important for the enhancement of genetic variability and for creating polymorphism useful in molecular mapping studies.Through collaborative efforts,severa... Integrating alleles from Gossypium species into G.hirsutum is important for the enhancement of genetic variability and for creating polymorphism useful in molecular mapping studies.Through collaborative efforts,several species including G.barbadense,G.tomentosum,and G.mustelinum 展开更多
关键词 Use of Interspecific Hybrids in the Texas A&M university Cotton Improvement Laboratory
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Laboratory of Bioinformatics Founded at Tsinghua University
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《Tsinghua Science and Technology》 SCIE EI CAS 2002年第5期491-491,共1页
关键词 Laboratory of Bioinformatics Founded at Tsinghua university
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