Computer Science ›› 2025, Vol. 52 ›› Issue (11A): 250200043-7.doi: 10.11896/jsjkx.250200043
• Image Processing & Multimedia Technology • Previous Articles Next Articles
WANG Hongqiang, ZHAO Hui, JIA Zhenhong
CLC Number:
| [1]REDMON J.You only look once:Unified,real-time object detection[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition.2016. [2]LIU W,ANGUELOV D,ERHAN D,et al.SSD:Single shotmultibox detector[C]//Computer Vision-ECCV 2016:14th European Conference.Amsterdam,The Netherlands,.Springer,2016:21-37. [3]LIN T.Focal loss for dense object detection[J].arXiv:1708.02002,2017. [4]TAN M,PANG R,LE Q V.EfficientDet:Scalable and efficient object detection[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition.2020:10781-10790. [5]TIAN Z,SHEN C,CHEN H,et al.FCOS:Fully convolutionalone-stage object detection[J].arXiv:1904.01355,2019. [6]LAW H,DENG J.CornerNet:Detecting objects as paired keypoints[C]//Proceedings of the European Conference on Computer Vision(ECCV).2018:734-750. [7]GIRSHICK R,DONAHUE J,DARRELL T,et al.Rich feature hierarchies for accurate object detection and semantic segmentation[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition.2014:580-587. [8]CAI Z,VASCONCELOS N.Cascade R-CNN:Delving into high quality object detection[C]//Proceedings of the IEEE Confe-rence on Computer Vision and Pattern Recognition.2018:6154-6162. [9]GIRSHICK R.Fast R-CNN[J].arXiv:1504.08083,2015. [10]REN S.Faster R-CNN:Towards real-time object detection with region proposal networks[J].arXiv:1506.01497,2015. [11]HAQUE M A,MARWAHA S,DEB C K,et al.Deep learning-based approach for identification of diseases of maize crop[J].Scientific Reports,2022,12(1):6334. [12]ZHAO Y,SUN C,XU X,et al.RIC-Net:A plant disease classification model based on the fusion of inception and residual structure and embedded attention mechanism[J].Computers and Electronics in Agriculture,2022,193:106644. [13]FAN X,SUN T,CHAI X,et al.YOLO-WDNet:A lightweight and accurate model for weeds detection in cotton field[J].Computers and Electronics in Agriculture,2024,225:109317. [14]WANG B,HUA J,XIA L,et al.A defect detection method for Akidzuki pears based on computer vision and deep learning[J].Postharvest Biology and Technology,2024,218:113157. [15]SYED-AB-RAHMAN S F,HESAMIAN M H,PRASAD M.Citrus disease detection and classification using end-to-end anchor-based deep learning model[J].Applied Intelligence,2022,52(1):927-938. [16]JOHNSON J,SHARMA G,SRINIVASAN S,et al.Enhancedfield-based detection of potato blight in complex backgrounds using deep learning[J].Plant Phenomics,2021,2021:9835724. [17]BAO W,ZHU Z,HU G,et al.UAV remote sensing detection of tea leaf blight based on DDMA-YOLO[J].Computers and Electronics in Agriculture,2023,205:107637. [18]TIAN Y,WANG S,LI E,et al.MD-YOLO:Multi-scale dense YOLO for small target pest detection[J].Computers and Electronics in Agriculture,2023,213:108233. [19]FAN Z,LIU Q.Adaptive region-aware feature enhancement for object detection[J].Pattern Recognition,2022,124:108437. [20]QI J,LIU X,LIU K,et al.An improved YOLOv5 model based on visual attention mechanism:Application to recognition of tomato virus disease[J].Computers and Electronics in Agriculture,2022,194:106780. [21]ZHANG Y,MA B,HU Y,et al.Accurate cotton diseases and pests detection in complex background based on an improved YOLOX model[J].Computers and Electronics in Agriculture,2022,203:107484. [22]GE C,DING X,TONG Z,et al.Advancing vision transformers with group-mix attention[J].arXiv:2311.15157,2023,11:113027-113041. [23]DENG C,WANG M,LIU L,et al.Extended feature pyramid network for small object detection[J].IEEE Transactions on Multimedia,2021,24:1968-1979. [24]LI S,LIU C,TANG K,et al.Improved YOLOv5s algorithm for small target detection in UAV aerial photography[J].IEEE Access,2024. [25]JING R,ZHANG W,LIU Y,et al.An effective method for small object detection in low-resolution images[J].Engineering Applications of Artificial Intelligence,2024,127:107206. [26]GAO J,GENG X,ZHANG Y,et al.Augmented weighted bidirectional feature pyramid network for marine object detection[J].Expert Systems with Applications,2024,237:121688. [27]MA J,LU A,CHEN C,et al.YOLOv5-Lotus:An efficient object detection method for lotus seedpod in a natural environment[J].Computers and Electronics in Agriculture,2023,206:107635. [28]SONG G,DU H,ZHANG X,et al.Small object detection in unmanned aerial vehicle images using multi-scale hybrid attention[J].Engineering Applications of Artificial Intelligence,2024,128:107455. [29]HUANG M,YAN W,DAI W,et al.EST-YOLOv5s:SAR image aircraft target detection model based on improved YOLOv5s[J].IEEE Access,2023,11:113027-113041. [30]VARGHESE R,SAMBATH M.YOLOv8:A novel object detection algorithm with enhanced performance and robustness[C]//2024 International Conference on Advances in Data Engineering and Intelligent Computing Systems(ADICS).IEEE,2024:1-6. [31]GEVORGYAN Z.SIoU loss:More powerful learning for bounding box regression[J].arXiv:2205.12740,2022. [32]HU J,SHEN L,SUN G.Squeeze-and-excitation networks[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition.2018:7132-7141. [33]HOU Q,ZHOU D,FENG J.Coordinate attention for efficient mobile network design[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition.2021:13713-13722. [34]WANG Q,WU B,ZHU P,et al.ECA-Net:Efficient channel attention for deep convolutional neural networks[C]//Procee-dings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition.2020:11534-11542. [35]WOO S,PARK J,LEE J Y,et al.CBAM:Convolutional block attention module[C]//Proceedings of the European Conference on Computer Vision(ECCV).2018:3-19. [36]ZHENG Z,WANG P,LIU W,et al.Distance-IoU loss:Fasterand better learning for bounding box regression[C]//Procee-dings of the AAAI Conference on Artificial Intelligence.2020:12993-13000. [37]ZHANG Y F,REN W,ZHANG Z,et al.Focal and efficient IoU loss for accurate bounding box regression[J].Neurocomputing,2022,506:146-157. [38]TONG Z,CHEN Y,XU Z,et al.Wise-IoU:Bounding box regression loss with dynamic focusing mechanism[J].arXiv:2301.10051,2023. |
| [1] | WANG Xinyu, GAO Donghuai, NING Yuwen, XU Hao, QI Haonan. Student Behavior Detection Method Based on Improved YOLO Algorithm [J]. Computer Science, 2026, 53(3): 246-256. |
| [2] | QIAN Qing, CHEN Huicheng, CUI Yunhe, TANG Ruixue, FU Jinmei. Joint Entity and Relation Extraction Method with Multi-scale Collaborative Aggregation and Axial-semantic Guidance [J]. Computer Science, 2026, 53(3): 97-106. |
| [3] | GE Zeqing, HUANG Shengjun. Semi-supervised Learning Method for Multi-label Tabular Data [J]. Computer Science, 2026, 53(3): 151-157. |
| [4] |
CHANG Xuanwei, DUAN Liguo, CHEN Jiahao, CUI Juanjuan, LI Aiping.
Method for Span-level Sentiment Triplet Extraction by Deeply Integrating Syntactic and Semantic Features [J]. Computer Science, 2026, 53(2): 322-330. |
| [5] | ZHANG Jing, PAN Jinghao, JIANG Wenchao. Background Structure-aware Few-shot Knowledge Graph Completion [J]. Computer Science, 2026, 53(2): 331-341. |
| [6] |
ZHUO Tienong, YING Di, ZHAO Hui.
Research on Student Classroom Concentration Integrating Cross-modal Attention and Role Interaction [J]. Computer Science, 2026, 53(2): 67-77. |
| [7] | XU Jingtao, YANG Yan, JIANG Yongquan. Time-Frequency Attention Based Model for Time Series Anomaly Detection [J]. Computer Science, 2026, 53(2): 161-169. |
| [8] | HAN Lei, SHANG Haoyu, QIAN Xiaoyan, GU Yan, LIU Qingsong, WANG Chuang. Constrained Multi-loss Video Anomaly Detection with Dual-branch Feature Fusion [J]. Computer Science, 2026, 53(2): 236-244. |
| [9] | GUO Xingxing, XIAO Yannan, WEN Peizhi, XU Zhi, HUANG Wenming. Attention-based Audio-driven Digital Face Video Generation Method [J]. Computer Science, 2026, 53(2): 245-252. |
| [10] | JI Sai, QIAO Liwei, SUN Yajie. Semantic-guided Hybrid Cross-feature Fusion Method for Infrared and Visible Light Images [J]. Computer Science, 2026, 53(2): 253-263. |
| [11] | LYU Jinggang, GAO Shuo, LI Yuzhi, ZHOU Jin. Facial Expression Recognition with Channel Attention Guided Global-Local Semantic Cooperation [J]. Computer Science, 2026, 53(1): 195-205. |
| [12] | FAN Jiabin, WANG Baohui, CHEN Jixuan. Method for Symbol Detection in Substation Layout Diagrams Based on Text-Image MultimodalFusion [J]. Computer Science, 2026, 53(1): 206-215. |
| [13] | WANG Haoyan, LI Chongshou, LI Tianrui. Reinforcement Learning Method for Solving Flexible Job Shop Scheduling Problem Based onDouble Layer Attention Network [J]. Computer Science, 2026, 53(1): 231-240. |
| [14] | CHEN Qian, CHENG Kaixuan, GUO Xin, ZHANG Xiaoxia, WANG Suge, LI Yanhong. Bidirectional Prompt-Tuning for Event Argument Extraction with Topic and Entity Embeddings [J]. Computer Science, 2026, 53(1): 278-284. |
| [15] | PENG Jiao, HE Yue, SHANG Xiaoran, HU Saier, ZHANG Bo, CHANG Yongjuan, OU Zhonghong, LU Yanyan, JIANG dan, LIU Yaduo. Text-Dynamic Image Cross-modal Retrieval Algorithm Based on Progressive Prototype Matching [J]. Computer Science, 2025, 52(9): 276-281. |
|
||