Knowledge Graph-Based Image Recognition Transfer Learning Method for On-Orbit Service Manipulation

IF 0.5 4区 工程技术 Q4 ENGINEERING, AEROSPACE 中国空间科学技术 Pub Date : 2021-08-06 DOI:10.34133/2021/9807452
Ao Chen, Yongchun Xie, Yong Wang, Linfeng Li
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引用次数: 8

Abstract

Visual perception provides state information of current manipulation scene for control system, which plays an important role in on-orbit service manipulation. With the development of deep learning, deep convolutional neural networks (CNNs) have achieved many successful applications in the field of visual perception. Deep CNNs are only effective for the application condition containing a large number of training data with the same distribution as the test data; however, real space images are difficult to obtain during large-scale training. Therefore, deep CNNs can not be directly adopted for image recognition in the task of on-orbit service manipulation. In order to solve the problem of few-shot learning mentioned above, this paper proposes a knowledge graph-based image recognition transfer learning method (KGTL), which learns from training dataset containing dense source domain data and sparse target domain data, and can be transferred to the test dataset containing large number of data collected from target domain. The average recognition precision of the proposed method is 80.5%, and the average recall is 83.5%, which is higher than that of ResNet50-FC; the average precision is 60.2%, and the average recall is 67.5%. The proposed method significantly improves the training efficiency of the network and the generalization performance of the model.
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基于知识图的在轨服务操作图像识别迁移学习方法
视觉感知为控制系统提供当前操作场景的状态信息,在在轨服务操作中起着重要作用。随着深度学习的发展,深度卷积神经网络(cnn)在视觉感知领域取得了许多成功的应用。深度cnn仅对包含大量与测试数据分布相同的训练数据的应用条件有效;然而,在大规模训练中很难获得真实的空间图像。因此,深度cnn不能直接用于在轨业务操作任务中的图像识别。为了解决上述的少镜头学习问题,本文提出了一种基于知识图的图像识别迁移学习方法(KGTL),该方法从包含密集源域数据和稀疏目标域数据的训练数据集中学习,并可以迁移到包含大量目标域数据的测试数据集中。该方法的平均识别精度为80.5%,平均召回率为83.5%,高于ResNet50-FC;平均准确率为60.2%,平均召回率为67.5%。该方法显著提高了网络的训练效率和模型的泛化性能。
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来源期刊
中国空间科学技术
中国空间科学技术 ENGINEERING, AEROSPACE-
CiteScore
1.80
自引率
66.70%
发文量
3141
期刊介绍:
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