• Electronics Optics & Control
  • Vol. 30, Issue 5, 44 (2023)
DU Yunyan1、2、3, YANG Jinhui1、2、3, LI Hong1、2、3, MAO Yao1、2、3, and JIANG Yu1、2、3
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
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    DOI: 10.3969/j.issn.1671-637x.2023.05.009 Cite this Article
    DU Yunyan, YANG Jinhui, LI Hong, MAO Yao, JIANG Yu. Few-Shot Object Detection Algorithm Based on Improved Faster RCNN[J]. Electronics Optics & Control, 2023, 30(5): 44 Copy Citation Text show less

    Abstract

    At present,most object detection rely on large-scale annotation datasets to ensure the accuracy of detection.In the actual scene,it is very difficult to obtain a large amount of data,and it also takes a lot of manpower and material resources to annotate the data.To solve the problem,a Few-Shot Object Detection algorithm based on Faster RCNN,CA-FSOD,is proposed,which detects the object samples when there are only a few annotated samples in the object category.In order to improve the detection performance,a CBAM-Attention-RPN module is proposed to reduce the number of irrelevant candidate regions.Secondly,a global-local relation detector module is proposed to obtain candidate regions that are more related to the object category by associating the features of a small number of annotated samples and samples to be detected;Finally,a classifier based on cosine Softmax loss is proposed as the classification branch of object detection, which can effectively aggregate the same category features,reduce the intra-class variance and improve the detection accuracy.In order to verify the proposed algorithm,it is trained and tested on MS COCO dataset.The experimental results show that the AP50 is 21.9% for this method,which is better than that of some existing few-shot object detection algorithms.
    DU Yunyan, YANG Jinhui, LI Hong, MAO Yao, JIANG Yu. Few-Shot Object Detection Algorithm Based on Improved Faster RCNN[J]. Electronics Optics & Control, 2023, 30(5): 44
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