论文标题
使用主动微调网络对多源遥感数据的车辆检测
Vehicle Detection of Multi-source Remote Sensing Data Using Active Fine-tuning Network
论文作者
论文摘要
近年来,遥感图像中的车辆检测吸引了越来越多的兴趣。但是,由于缺乏通知的样本,其检测能力受到限制,尤其是在密集拥挤的场景中。此外,由于提供了远程感知的数据源的列表,因此从多源数据中有效利用有用信息以进行更好的车辆检测是具有挑战性的。为了解决上述问题,提出了一个多源主动微调车辆检测(MS-AFT)框架,该框架将转移学习,细分和主动分类整合到一个自动标记和检测的统一框架中。拟议的MS-AFT采用微调网络首先从未标记的数据集生成车辆训练集。为了应对车辆类别的多样性,然后设计了基于多源的分割分支,以构建其他候选对象集。高质量车辆的分离是通过设计的专注分类网络实现的。最后,将所有三个分支合并以实现车辆检测。在两个开放的ISPR基准数据集上进行的广泛实验结果,即Vaihingen Village和Potsdam City数据集,证明了拟议的MS-AFT用于车辆检测的优势和有效性。此外,在大型露营地的立体空中图像上进一步验证了MS-AFT在密集的遥感场景中的概括能力。
Vehicle detection in remote sensing images has attracted increasing interest in recent years. However, its detection ability is limited due to lack of well-annotated samples, especially in densely crowded scenes. Furthermore, since a list of remotely sensed data sources is available, efficient exploitation of useful information from multi-source data for better vehicle detection is challenging. To solve the above issues, a multi-source active fine-tuning vehicle detection (Ms-AFt) framework is proposed, which integrates transfer learning, segmentation, and active classification into a unified framework for auto-labeling and detection. The proposed Ms-AFt employs a fine-tuning network to firstly generate a vehicle training set from an unlabeled dataset. To cope with the diversity of vehicle categories, a multi-source based segmentation branch is then designed to construct additional candidate object sets. The separation of high quality vehicles is realized by a designed attentive classifications network. Finally, all three branches are combined to achieve vehicle detection. Extensive experimental results conducted on two open ISPRS benchmark datasets, namely the Vaihingen village and Potsdam city datasets, demonstrate the superiority and effectiveness of the proposed Ms-AFt for vehicle detection. In addition, the generalization ability of Ms-AFt in dense remote sensing scenes is further verified on stereo aerial imagery of a large camping site.