Learning to detect novel objects from few annotated examples is of great practical importance. A particularly challenging yet common regime occurs when there are extremely limited examples (less than three). One critical factor in improving few-shot detection is to address the lack of variation in training data. We propose to build a better model of variation for novel classes by transferring the shared within-class variation from base classes. To this end, we introduce a hallucinator network that learns to generate additional, useful training examples in the region of interest (RoI) feature space, and incorporate it into a modern object detection model. Our approach yields significant performance improvements on two state-of-the-art few-shot detectors with different proposal generation procedures. In particular, we achieve new state of the art in the extremely-few-shot regime on the challenging COCO benchmark.
翻译:从几个附加说明的例子中学习发现新物体具有极大的实际意义。当有极有限的事例(不到三个)时,就会出现一个特别具有挑战性但又很常见的制度。改进微小探测的一个关键因素是解决培训数据缺乏差异的问题。我们建议通过将同级内部差异从基级中转移来为新类建立一个更好的变异模式。为此,我们引入了一个幻觉网络,学会在感兴趣的区域地物空间产生更多有用的培训范例,并将其纳入现代物体探测模型。我们的方法对两个具有不同生成投标书程序的最先进的短镜头探测器产生了显著的性能改进。特别是,我们在挑战性的COCOCO基准的极微小的系统上取得了新的最新进展。