Few-Shot Object Detection (FSOD) methods are mainly designed and evaluated on natural image datasets such as Pascal VOC and MS COCO. However, it is not clear whether the best methods for natural images are also the best for aerial images. Furthermore, direct comparison of performance between FSOD methods is difficult due to the wide variety of detection frameworks and training strategies. Therefore, we propose a benchmarking framework that provides a flexible environment to implement and compare attention-based FSOD methods. The proposed framework focuses on attention mechanisms and is divided into three modules: spatial alignment, global attention, and fusion layer. To remain competitive with existing methods, which often leverage complex training, we propose new augmentation techniques designed for object detection. Using this framework, several FSOD methods are reimplemented and compared. This comparison highlights two distinct performance regimes on aerial and natural images: FSOD performs worse on aerial images. Our experiments suggest that small objects, which are harder to detect in the few-shot setting, account for the poor performance. Finally, we develop a novel multiscale alignment method, Cross-Scales Query-Support Alignment (XQSA) for FSOD, to improve the detection of small objects. XQSA outperforms the state-of-the-art significantly on DOTA and DIOR.
翻译:微小物体探测(FSOD)方法主要是在Pascal VOC和MS COCO等自然图像数据集上设计和评估的,但尚不清楚的是,自然图像的最佳方法是否也是空中图像的最佳方法。此外,由于探测框架和培训战略多种多样,很难直接比较FSOD方法的性能。因此,我们提出一个基准框架,提供一个灵活的环境,以实施和比较以关注为基础的FSOD方法。拟议框架侧重于关注机制,分为三个模块:空间协调、全球关注和聚变层。为了保持现有方法的竞争力,这些方法往往利用复杂的培训,我们提议为物体探测设计新的增强技术。利用这个框架,若干FSOD方法得到重新实施和比较。这种比较突出了两个不同的航空和自然图像性能制度:FSOD在空中图像上表现更差。我们的实验表明,小型物体在几发环境中难以探测,这是造成性能不佳的原因。最后,我们为FSOODDDA设计了一个新的多尺度协调方法,跨级支持性能-QSA(XQSA),大大改进了DOAR-SA的X格式。