Open-set object detection (OSOD) aims to detect the known categories and identify unknown objects in a dynamic world, which has achieved significant attentions. However, previous approaches only consider this problem in data-abundant conditions. We seek a solution for few-shot open-set object detection (FSOSOD), which aims to quickly train a detector based on few samples while detecting all known classes and identifying unknown classes. The main challenge for this task is that few training samples tend to overfit on the known classes, and lead to poor open-set performance. We propose a new FSOSOD algorithm to tackle this issue, named FOOD, which contains a novel class dropout cosine classifier (CDCC) and a novel unknown decoupling learner (UDL). To prevent over-fitting, CDCC randomly inactivates parts of the normalized neurons for the logit prediction of all classes, and then decreases the co-adaptability between the class and its neighbors. Alongside, UDL decouples training the unknown class and enables the model to form a compact unknown decision boundary. Thus, the unknown objects can be identified with a confidence probability without any pseudo-unknown samples for training. We compare our method with several state-of-the-art OSOD methods in few-shot scenes and observe that our method improves the recall of unknown classes by 5%-9% across all shots in VOC-COCO dataset setting.
翻译:开放天体检测(OSOD)旨在检测已知的类别,并识别动态世界中已引起极大关注的未知对象。 但是, 先前的方法只在数据丰富的条件下考虑这一问题。 我们寻求一个解决方案, 以少量的开放天体检测( FSOSOD) 快速培训基于少量样本的检测器, 同时检测所有已知的类别并识别未知的类别。 这项任务的主要挑战在于, 很少的培训样本往往过分适合已知的类别, 导致开放性能差。 我们提出了一个新的FSOSOD算法, 以解决这个问题, 名为 FOD, 包含一个新型的班级丢弃 Cosine 分类( CDCC), 以及一个新颖的不为人知的解开的学习器( UDL ) 。 为了防止超配, CDCC 随机不动地将正常神经元部分用于所有类的逻辑预测, 然后降低课堂及其邻居之间的共适应性。 与此同时, UDL decouples 培训未知的阶级, 使模型形成一个不为人所知的决定边界。 因此, 未知的天体样本可以比我们所有的图像中的 V- shodes- pass- pass- pass- passion- prog- profrog- proformmations