Computer Engineering and Applications ›› 2022, Vol. 58 ›› Issue (24): 12-28.DOI: 10.3778/j.issn.1002-8331.2206-0139
• Research Hotspots and Reviews • Previous Articles Next Articles
HAN Jingjing, LIU Jiangyue, GONG Weijun, WEI Hongyang, QIAN Yurong
Online:
2022-12-15
Published:
2022-12-15
韩晶晶,刘江越,公维军,魏宏杨,钱育蓉
HAN Jingjing, LIU Jiangyue, GONG Weijun, WEI Hongyang, QIAN Yurong. Object Detection Optimization Research for Mobile Terminals[J]. Computer Engineering and Applications, 2022, 58(24): 12-28.
韩晶晶, 刘江越, 公维军, 魏宏杨, 钱育蓉. 面向移动端的目标检测优化研究[J]. 计算机工程与应用, 2022, 58(24): 12-28.
Add to citation manager EndNote|Ris|BibTeX
URL: http://cea.ceaj.org/EN/10.3778/j.issn.1002-8331.2206-0139
[1] 丁培,阿里甫·库尔班,耿丽婷,等.自然环境下实时人脸口罩检测与规范佩戴识别[J].计算机工程与应用,2021,57(24):268-275. DING P,ARIF K,GENG L T,et al.Real-time face mask detection and standard wearing recognition method in natural environment[J].Computer Engineering and Applications,2021,57(24):268-275. [2] 闵巍庆,刘林虎,刘宇昕,等.食品图像识别方法综述[J].计算机学报,2022,45(3):542-566. MIN W Q,LIU L H,LIU Y X,et al.A survey on food image recognition[J].Chinese Journal of Computers,2022,45(3):542-566. [3] LECUN Y,BENGIO Y,HINTON G.Deep learning[J].Nature,2015,521(7553):436-444. [4] 张政馗,庞为光,谢文静,等.面向实时应用的深度学习研究综述[J].软件学报,2020,31(9):2654-2677. ZHANG Z K,PANG W G,XIE W J,et al.Deep learning for real-time applications:a suvery[J].Journal of Software,2020,31(9):2654-2677. [5] 张展,张宪琦,左德承,等.面向边缘计算的目标追踪应用部署策略研究[J].软件学报,2020,31(9):2691-2708. ZHANG Z,ZHANG X Q,ZUO D C,et al.Research on target tracking application deployment strategy for edge computing[J].Journal of Software,2020,31(9):2691-2708. [6] HINTON G E,SALAKHUTDINOV R R.Reducing the dimensionality of data with neural networks[J].Science,2006,313(5786):504-507. [7] PAPAGEORGIOU C P,OREN M,POGGIO T.A general framework for object detection[C]//International Conference on Computer Vision,1998:555-562. [8] LOWE D G.Object recognition from local scale-invariant features[C]//International Conference on Computer Vision,1998:1150-1157. [9] OJALA T,PIETIKAINEN M,MAENPAA T.Multiresolution gray-scale and rotation invariant texture classification with local binary patterns[J].Transactions on Pattern Analysis and Machine Intelligence,2002,24(7):971-987. [10] KE Y,SUKTHANKAR R.PCA-SIFT:a more distinctive representation for local image descriptors[C]//Computer Vision and Pattern Recognition,2004:506-513. [11] BAY H,TUYTELAARS T,GOOL L.SURF:speeded up robust features[C]//European Conference on Computer Vision,2006:404-417. [12] VIOLA P,JONES M J.Robust real-time face detection[J].International Journal of Computer Vision,2004,57(2):137-154. [13] FREUND Y.Experiments with a new boosting algorithm[C]//International Conference on Machine Learning,1996:148-156. [14] DALAL N,TRIGGS B.Histograms of oriented gradients for human detection[C]//Computer Vision and Pattern Recognition,2005:886-893. [15] HEARST M A,DUMAIS S T,OSMAN E,et al.Support vector machines[J].Intelligent Systems and Their Applications,1998,13(4):18-28. [16] FELZENSZWALB P F,GIRSHICK R B.Object detection with discriminatively trained part-based models[J].Transactions on Pattern Analysis and Machine Intelligence,2010,32(9):1627-1645. [17] FELZENSZWALB P F,MCALLESTER D A,RAMANAN D.A discriminatively trained,multiscale,deformable part model[C]//Computer Vision and Pattern Recognition,2008:1-8. [18] GRAEFE G.The?cascades?framework?for?query?optimization[J].Data Engineering Bulletin,1995,18(3):19-29. [19] FELZENSZWALB P F,GIRSHICK R B.Cascade object detection with deformable part models[C]//Computer Vision and Pattern Recognition,2010:2241-2248. [20] LECUN Y,BOTTOU L,BENGIO Y,et al.Gradient-based learning applied to document recognition[J].Proceedings of the IEEE,1998,86(11):2278-2324. [21] KRIZHEVSKY A,SUTSKEVER I,HINTON G E.Imagenet classification with deep convolutional neural networks[J].Advances in Neural Information Processing Systems,2012,25(2):1097-1105. [22] HE K,ZHANG X,REN S,et al.Deep residual learning for image recognition[C]//Computer Vision and Pattern Recognition,2016:770-778. [23] GIRSHICK R,DONAHUE J.Rich feature hierarchies for accurate object detection and semantic segmentation[C]//Computer Vision and Pattern Recognition,2014:580-587. [24] HE K M,ZHANG X Y.Spatial pyramid pooling in deep convolutional networks for visual recognition[J].Transactions on Pattern Analysis and Machine Intelligence,2015,37(9):1904-1916. [25] GIRSHICK R.Fast R-CNN[C]//International Conference on Computer Vision,2015:1440-1448. [26] REN S,HE K,GIRSHICK R,et al.Faster R-CNN:towards real-time object detection with region proposal networks[J].Transactions on Pattern Analysis and Machine Intelligence,2017,39(6):1137-1149. [27] LIN T Y,DOLLáR P.Feature pyramid networks for object detection[C]//Computer Vision and Pattern Recognition,2017:2117-2125. [28] HE K M,GKIOXARI G,DOLLáR P,et al.Mask R-CNN[C]//International Conference on Computer Vision,2017:2961-2969. [29] CAI Z,VASCONCELOS N.Cascade R-CNN:delving into high quality object detection[C]//Computer Vision and Pattern Recognition,2018:6154-6162. [30] LIU S,QI L,QIN H,et al.Path aggregation network for instance segmentation[C]//Computer Vision and Pattern Recognition,2018:8759-8768. [31] ZHOU X,WANG D,KR?HENBüHL P.Objects as points[J].arXiv:1904.07850,2019. [32] ZHANG H,CHANG H,MA B,et al.Dynamic R-CNN:towards high quality object detection via dynamic training[C]//European Conference on Computer Vision,2020:260-275. [33] LI Z,WANG F,WANG N.LiDAR R-CNN:an efficient and universal 3D object detector[C]//Computer Vision and Pattern Recognition,2021. [34] SUN P,ZHANG R,JIANG Y,et al.Sparse R-CNN:end-to-end object detection with learnable proposals[C]//Computer Vision and Pattern Recognition,2021:14454-14463. [35] YANG C,HUANG Z,WANG N.QueryDet:cascaded sparse query for accelerating high-resolution small object detection[C]//Computer Vision and Pattern Recognition,2022:13668-13677. [36] 王兵,乐红霞,李文璟,等.改进YOLO轻量化网络的口罩检测算法[J].计算机工程与应用,2021,57(8):62-69. WANG B,LE H X,LI W J,et al.Mask detection algorithm based on improved YOLO lightweight network[J].Computer Engineering and Applications,2021,57(8):62-69. [37] REDMON J,DIVV S,GIRSHICK R,et al.You only look once:unified,real-time object detection[C]//Computer Vision and Pattern Recognition,2016:779-788. [38] REDMON J,FARHADI A.YOLO9000:better,faster,stronger[C]//Computer Vision and Pattern Recognition,2017:7263-7271. [39] REDMON J,FARHADI A.Yolov3:an incremental improvement[J].arXiv:1804.02767,2018. [40] BOCHKOVSKIY A,WANG C Y,LIAO H.Yolov4:optimal speed and accuracy of object detection[J].arXiv:2004. 10934,2020. [41] LIU W,ANGUELOV D,ERHAN D,et al.SSD:single shot multibox detector[C]//International Conference on Computer Vision,2016:21-37. [42] FU C Y,LIU W,RANGA A,et al.DSSD:deconvolutional single shot detector[J].arXiv:1701.06659,2017. [43] LI Z X,ZHOU F Q.FSSD:feature fusion single shot multibox detector[J].arXiv:1712.00960,2017. [44] GE Z,LIU S,WANG F,et al.Yolox:exceeding yolo series in 2021[J].arXiv:2107.08430,2021. [45] CHEN Q,WANG Y,YANG T,et al.You only look one-level feature[C]//Computer Vision and Pattern Recognition,2021:13039-13048. [46] XU S,WANG X,LV W,et al.PP-YOLOE:an evolved version of YOLO[J].arXiv:2203.16250,2022. [47] 赵鹏飞,谢林柏,彭力.融合注意力机制的深层次小目标检测算法[J].计算机科学与探索,2022,16(4):927-937. ZHAO P F,XIE L B,PENG L,et al.Deep small object detection algorithm integrating attention mechanism[J].Journal of Frontiers of Computer Science and Technology,2022,16(4):927-937. [48] 陈科圻,朱志亮,邓小明,等.多尺度目标检测的深度学习研究综述[J].软件学报,2021,32(4):1201-1227. CHEN K Q,ZHU Z L,DENG X M,et al.Deep learning for multi-scale object detection:a survey[J].Journal of Software,2021,32(4):1201-1227. [49] SIFRE L,MALLAT S.Rigid-motion scattering for texture classification[J].Computer Science,2014,3559(2014):501-515. [50] ZOPH B,LE P V.Neural architecture search with reinforcement learning[J].arXiv:1611.01578,2016. [51] IANDOLA F N,HAN S,MOSKEWICZ M W,et al.SqueezeNet:AlexNet-level accuracy with 50x fewer parameters and <0.5MB model size[J].arXiv:1602.07360,2016. [52] HOWARD A G,ZHU M,CHEN B,et al.MobileNets:efficient convolutional neural networks for mobile vision applications[J].arXiv:1704.04861,2017. [53] SANDLER M,HOWARD A,ZHU M,et al.MobileNet V2:inverted residuals and linear bottlenecks[C]//Computer Vision and Pattern Recognition,2018:4510-4520. [54] ZHANG X,ZHOU X,LIN M,et al.ShuffleNet:an extremely efficient convolutional neural network for mobile devices[C]//Computer Vision and Pattern Recognition,2018:6848-6856. [55] MA N,ZHANG X,ZHENG H T,et al.ShuffleNet V2:practical guidelines for efficient CNN architecture design[C]//European Conference on Computer Vision,2018:116-131. [56] HE Y,LIN J,LIU Z,et al.AMC:AutoML for model compression and acceleration on mobile devices[C]//European Conference on Computer Vision,2018:784-800. [57] HOWARD A,SANDLER M,CHEN B,et al.Searching for MobileNetV3[C]//International Conference on Computer Vision,2019:1314-1324. [58] HU J,SHEN L,SUN G.Squeeze-and-excitation networks[C]//Computer Vision and Pattern Recognition,2018:7132-7141. [59] TAN M,CHEN B,PANG R,et al.MnasNet:platform-aware neural architecture search for mobile[C]//Computer Vision and Pattern Recognition,2019:2820-2828. [60] HAN K,WANG Y,TIAN Q,et al.GhostNet:more features from cheap operations[C]//Computer Vision and Pattern Recognition,2020:1580-1589. [61] YU C,XIAO B,GAO C,et al.Lite-hrnet:a lightweight high-resolution network[C]//Computer Vision and Pattern Recognition,2021:10440-10450. [62] MA H,XIA X,WANG X,et al.MoCoViT:mobile convolutional vision transformer[J].arXiv:2205.12635,2022. [63] TUCKER L R.Some mathematical notes on three-mode factor analysis[J].Psychometrika,1966,31(3):279-311. [64] KLEMA V,LAUB A.The singular value decomposition:its computation and some applications[J].Transactions on Automatic Control,1980,25(2):164-176. [65] NOVIKOV A,PODOPRIKHIN D,OSOKIN A,et al.Tensorizing neural networks[C]//Natural Information Processing Canada,2015:442-450. [66] WANG W,AGGARWAL V,AERON S.Efficient low rank tensor ring completion[C]//International Conference on Computer Vision,2017:5697-5705. [67] DENTON E L,ZAREMBA W,BRUNA J.Exploiting linear structure within convolutional networks for efficient evaluation[C]//Neural Information Processing Systems,2014:1269-1277. [68] GARIPOV T,PODOPRIKHIN D,NOVIKOV A,et al.Ultimate tensorization:compressing convolutional and FC layers alike[J].arXiv:1611.03214,2016. [69] ZHAO Q,SUGIYAMA M,YUAN L,et al.Learning efficient tensor representations with ring-structured networks[C]//International Conference on Acoustics,Speech and Signal Processing,2019. [70] CHIEN J T,BAO Y T.Tensor-factorized neural networks[J].Transactions on Neural Networks and Learning Systems,2017,29(5):1998-2011. [71] HUANG H,NI L,WANG K,et al.A highly parallel and energy efficient three-dimensional multilayer CMOS-RRAM accelerator for tensorized neural network[J].IEEE Transactions on Nanotechnology,2017,17(4):645-656. [72] CHEN Y,JIN X,KANG B,et al.Sharing residual units through collective tensor factorization to improve deep neural networks[C]//International Joint Conference on Artificial Intelligence,2018:635-641. [73] LATHAUWER L D.Decompositions of a higher-order tensor in block terms-Part II:definitions and uniqueness[J].Siam Journal on Matrix Analysis and Applications,2008,30(3):1022-1032. [74] CAI H Q,CHAO Z,HUANG L,et al.Fast robust tensor principal component analysis via fiber cur decomposition[C]//International Conference on Computer Vision,2021:189-197. [75] YIN M,SUI Y,LIAO S,et al.Towards efficient tensor decomposition-based DNN model compression with optimization framework[C]//Computer Vision and Pattern Recognition,2021:10674-10683. [76] BOYD S,PARIKH N,CHU E,et al.Distributed optimization and statistical learning via the alternating direction method of multipliers[J].Foundations and Trends in Machine Learning,2010,3(1):1-122. [77] KHOUJA R,MATTEI P A,MOURRAIN B.Tensor decomposition for learning Gaussian mixtures from moments[J].arXiv:2106.00555,2021. [78] HUANG H,NI L,WANG K,et al.A highly parallel and energy efficient three-dimensional multilayer CMOS-RRAM accelerator for tensorized neural network[J].Transactions on Nanotechnology,2017,17(4):645-656. [79] ZHONG Z,WEI F,LIN Z,et al.ADA-tucker:compressing deep neural networks via adaptive dimension adjustment tucker decomposition[J].Neural Networks,2019,110:104-115. [80] 刘海洋,王志海,张志东.基于ReliefF剪枝的多标记分类算法[J].计算机学报,2019,42(3):483-496. LIU H Y,WANG Z H,ZHANG Z D.ReliefF based pruning model for multi-label classification[J].Chinese Journal of Computers,2019,42(3):483-496. [81] HANSON S J,PRATT L Y.Comparing biases for minimal network construction with back-propagation[C]//Neural Information Processing Systems,USA,1988. [82] LECUN Y.Optimal brain damage[J].Neural Information Proceeding Systems,1990,279(2):598-605. [83] HASSIBI B,STORK D G.Second order derivatives for network pruning:optimal brain surgeon[C]//Neural Information Processing Systems.Morgan Kaufmann:ACM,1992:164-171. [84] HAN S,POOL J,TRAN J,et al.Learning both weights and connections for efficient neural networks[J].Neural Information Processing Systems,2015,28:1135-1143. [85] HAN S,MAO H.Deep compression:compressing deep neural networks with pruning,trained quantization and huffman coding[C]//Conference on Learning Representations,2016. [86] LEBEDEV V,LEMPITSKY V.Fast ConvNets using group-wise brain damage[C]//Computer Vision and Pattern Recognition,2015:2554-2564. [87] ZHOU H,ALVAREZ J M,PORIKLI F.Less is more:towards compact CNNs[C]//European Conference on Computer Vision,2016:662-677. [88] HE Y,LIN J,LIU Z,et al.AMC:AutoML for model compression and acceleration on mobile devices[C]//European Conference on Computer Vision,2018:794-800. [89] YU J,HUANG T.AutoSlim:towards one-shot architecture search for channel numbers[C]//Computer Vision and Pattern Recognition,2019. [90] LIU N,MA X,XU Z,et al.AutoCompress:an automatic DNN structured pruning framework for ultra-high compression rates[C]//Conference on Artificial Intelligence,2020:4876-4883. [91] MENG F,CHENG H.Pruning filter in filter[J].Advances in Neural Information Processing Systems,2020,33:17629-17640. [92] WANG W,CHEN M,ZHAO S,et al.Accelerate CNNs from three dimensions:a comprehensive pruning framework[C]//International Conference on Machine Learning,2021:10717-10726. [93] GAO S,HUANG F,CAI W,et al.Network pruning via performance maximization[C]//Computer Vision and Pattern Recognition,2021:9270-9280. [94] MYUNG S,HUH I,JANG W,et al.PAC-Net:a model pruning approach to inductive transfer learning[C]//International Conference on Machine Learning,2022. [95] LIU S,CHEN T,CHEN X,et al.The unreasonable effectiveness of random pruning:return of the most Naive baseline for sparse training[J].arXiv:2202.02643,2022. [96] DENG L,LI G,HAN S,et al.Model compression and hardware acceleration for neural networks:a comprehensive survey[J].Proceedings of the IEEE,2020,108(4):485-532. [97] ZHU C,HAN S,MAO H,et al.Trained ternary quantization[J].arXiv:1612.01064,2016. [98] WEN W,XU C,YAN F,et al.Terngrad:ternary gradients to reduce communication in distributed deep learning[C]//Neural Information Processing Systems,2017:1509-1519. [99] LENG C,DOU Z,LI H,et al.Extremely low bit neural network:squeeze the last bit out with admm[C]//AAAI Conference on Artificial Intelligence,2018. [100] MISHRA A,NURVITADHI E,COOK J J,et al.WRPN:wide reduced-precision networks[J].arXiv:1709.01134,2017. [101] CAI Z,HE X,JIAN S,et al.Deep learning with low precision by half-wave Gaussian quantization[C]//Computer Vision and Pattern Recognition,2017:5918-5926. [102] ZHOU S,WU Y,NI Z,et al.Dorefa-net:training low bitwidth convolutional neural networks with low bitwidth gradients[J].arXiv:1606.06160,2016. [103] WU S,LI G,CHEN F,et al.Training and inference with integers in deep neural networks[J].arXiv:1802.04680,2018. [104] KAPUR S,MISHRA A.Low precision RNNs:quantizing RNNS without losing accuracy[J].arXiv:1710.07706,2017. [105] FIESLER E,CHOUDRY A,CAULFIELD H J.Weight discretization paradigm for optical neural networks[C]//International Society for Optics and Photonics,1990:164-173. [106] GUPTA S,AGRAWAL A,GOPALAKRISHNAN K,et al.Deep learning with limited numerical precision[C]//International Conference on Machine Learning,2015:1737-1746. [107] NAGEL M,AMJAD R A,VAN BAALEN M,et al.Up or down? adaptive rounding for post-training quantization[C]//International Conference on Machine Learning,2020:7197-7206. [108] MIYASHITA D,LEE E H,MURMANN B.Convolutional neural networks using logarithmic data representation[J].arXiv:1603.01025,2016. [109] GONG J,SHEN H,ZHANG G,et al.Highly efficient 8-bit low precision inference of convolutional neural networks with intelcaffe[C]//Proceedings of the 1st Reproducible Quality-Efficient Systems Tournament on Co-designing Pareto-efficient Deep Learning,2018. [110] LIU X,YE M,ZHOU D,et al.Post-training quantization with multiple points:mixed precision without mixed precision[J].arXiv:2002.09049,2020. [111] LIN X,ZHAO C,PAN W.Towards accurate binary convolutional neural network[C]//Neural Information Processing Systems,2017:30-38. [112] CHOUKROUN Y,KRAVCHIK E.Low-bit quantization of neural networks for efficient inference[C]//International Conference on Computer Vision Workshop,2019:3009-3018. [113] BANNER R,NAHSHAN Y,HOFFER E,et al.Post-training 4-bit quantization of convolution networks for rapid-deployment[J].arXiv:1810.05723,2018. [114] FANG J,SHAFIEE A,AZIZ H,et al.Post-training piecewise linear quantization for deep neural networks[C]//European Conference on Computer Vision,2020:69-86. [115] LEE J,KIM D,HAM B.Network quantization with element-wise gradient scaling[C]//Computer Vision and Pattern Recognition,2021:6448-6457. [116] 张帆,黄赟,方子茁,等.卷积神经网络的损失最小训练后参数量化方法[J].通信学报,2022,43(4):114-122. ZHANG F,HUANG Y,FANG Z Z,et al.Lost-minimum post-training parameter quantization method for convolutional neural network[J].Journal on Communications,2022,43(4):114-122. [117] NAHSHAN Y,CHMIEL B,BASKIN C,et al.Loss aware post-training quantization[J].Machine Learning,2021,110(11):3245-3262. [118] CHOI J,WANG Z,VENKATARAMANI S,et al.Pact:parameterized clipping activation for quantized neural networks[J].arXiv:1805.06085,2018. [119] GONG R,LIU X,JIANG S,et al.Differentiable soft quantization:bridging full-precision and low-bit neural networks[C]//International Conference on Computer Vision,2019:4852-4861. [120] GUO C,QIU Y,LENG J,et al.SQuant:on-the-fly data-free quantization via diagonal hessian approximation[J].arXiv:2202.07471,2022. [121] YANG J,SHEN X,XING J,et al.Quantization networks[C]//Computer Vision and Pattern Recognition,2019:7308-7316. [122] ZHUO L,ZHANG B,YANG L,et al.Cogradient descent for bilinear optimization[C]//Computer Vision and Pattern Recognition,2020:7959-7967. [123] ORNHAG M V,OLSSON C.A unified optimization framework for low-rank inducing penalties[C]//Computer Vision and Pattern Recognition,2020:8474-8483. [124] 董文轩,梁宏涛,刘国柱,等.深度卷积应用于目标检测算法综述[J].计算机科学与探索,2022,16(5):1025-1042. DONG W X,LIANG H T,LIU G D,et al.Review of deep convolution applied to target detection algorithms[J].Journal of Frontiers of Computer Science and Technology,2022,16(5):1025-1042. |
[1] | FU Miaomiao, DENG Miaolei, ZHANG Dexian. Object Detection Algorithms Based on Deep Learning and Transformer [J]. Computer Engineering and Applications, 2023, 59(1): 37-48. |
[2] | WANG Yixu, XIAO Xiaoling, WANG Pengfei, XIANG Jiafu. Improved YOLOv5s Small Target Smoke and Fire Detection Algorithm [J]. Computer Engineering and Applications, 2023, 59(1): 72-81. |
[3] | WANG Peng, WANG Yulin, JIAO Bowen, WANG Hongchang, YU Yixuan. Research on Road Target Detection Algorithm Based on YOLOv5 [J]. Computer Engineering and Applications, 2023, 59(1): 117-125. |
[4] | DENG Xue, ZHAO Hao, ZHANG Jing, MEI Boping, ZHANG Hua. Research on Offline Data Augmentation Method Jointed with Cannikin’s Law [J]. Computer Engineering and Applications, 2023, 59(1): 207-212. |
[5] | YANG Yongbo, LI Dong. Lightweight Helmet Wearing Detection Algorithm of Improved YOLOv5 [J]. Computer Engineering and Applications, 2022, 58(9): 201-207. |
[6] | WANG Hao, LEI Yinjie, CHEN Haonan. Real Time Traffic Sign Detection Algorithm Based on Improved YOLOV3 [J]. Computer Engineering and Applications, 2022, 58(8): 243-248. |
[7] | ZHAO Jielun, ZHANG Xingzhong, DONG Hongyue. Defect Detection in Transmission Line Based on Scale-Invariant Feature Pyramid Networks [J]. Computer Engineering and Applications, 2022, 58(8): 289-296. |
[8] | SUN Liujie, ZHAO Jin, WANG Wenju, ZHANG Yusen. Multi-Scale Transformer Lidar Point Cloud 3D Object Detection [J]. Computer Engineering and Applications, 2022, 58(8): 136-146. |
[9] | ZHOU Tianyu, ZHU Qibing, HUANG Min, XU Xiaoxiang. Defect Detection of Chip on Carrier Based on Lightweight Convolutional Neural Network [J]. Computer Engineering and Applications, 2022, 58(7): 213-219. |
[10] | YANG Jiayun, YAO Yinuo, YU Kun, LIU Xiumei, YU Minghe, ZHAO Zhibin. Research and Implementation of Semantic Constraint Verification Algorithm in Object Detection [J]. Computer Engineering and Applications, 2022, 58(7): 237-242. |
[11] | WANG Xinpeng, WANG Xiaoqiang, LIN Hao, LI Leixiao, YANG Yanyan, MENG Chuang, GAO Jing. Review on Improvement of Typical Object Detection Algorithms in Deep Learning [J]. Computer Engineering and Applications, 2022, 58(6): 42-57. |
[12] | LI Yanchen, ZHANG Xiaojun, ZHANG Minglu, SHEN Liangyi. Object Detection in Autonomous Driving Scene Based on Improved Efficientdet [J]. Computer Engineering and Applications, 2022, 58(6): 183-191. |
[13] | GUO Yuyang, HU Weichao, DAI Shuai, CHEN Yanyan. Lightweight Vehicle Detection Model for Roadside Traffic Monitoring Scenarios [J]. Computer Engineering and Applications, 2022, 58(6): 192-199. |
[14] | HUANG Guoxin, LI Wei, ZHANG Bihao, LIANG Binbin, HAN Xiaodong, GONG Jianglei, WU Changqing. Improved SSD-Based Multi-scale Object Detection Algorithm in Airport Surface [J]. Computer Engineering and Applications, 2022, 58(5): 264-270. |
[15] | ZHANG Zhenwei, HAO Jianguo, HUANG Jian, PAN Chongyu. Review of Few-Shot Object Detection [J]. Computer Engineering and Applications, 2022, 58(5): 1-11. |
Viewed | ||||||
Full text |
|
|||||
Abstract |
|
|||||