论文标题

迷你:挖掘隐性的新颖实例,用于少数对象检测

MINI: Mining Implicit Novel Instances for Few-Shot Object Detection

论文作者

Cao, Yuhang, Wang, Jiaqi, Lin, Yiqi, Lin, Dahua

论文摘要

从几个训练样本中学习是对象探测器的理想能力,激发了少量射击对象检测(FSOD)的探索。大多数现有的方法采用了预处理 - 转移范式。该模型首先是在具有丰富数据的基类中进行预训练,然后通过一些带注释的样本转移到新的类中。尽管取得了长足的进展,但FSOD的性能仍然远远远远远远远远远远不受欢迎。在预训练期间,由于基础和新型类别之间的共发生,该模型被学会了将共同占领的新颖类作为背景。在转移期间,由于新型班级的稀缺样本,该模型具有学习判别特征,以将新颖实例与背景和基础类别区分开。为了克服障碍,我们提出了一个新颖的框架,即采矿隐性新颖实例(MINI),以将隐含的新颖实例挖掘为辅助训练样本,该样本在丰富的基本数据中广泛存在,但并未注释。 Mini包括离线采矿机制和在线采矿机制。离线挖掘机制利用了一个自制的判别模型,可以通过训练有素的FSOD网络协作地挖掘隐性的新颖实例。在线采矿机制以辅助培训样本为辅助培训样品,采用教师学生框架,同时更新FSOD网络,并暂时更新了矿的隐性小说实例。关于Pascal VOC和MS-Coco数据集的广泛实验表明,Mini在任何镜头和分裂上都实现了新的最新性能。重大的绩效改进表明了我们方法的优势。

Learning from a few training samples is a desirable ability of an object detector, inspiring the explorations of Few-Shot Object Detection (FSOD). Most existing approaches employ a pretrain-transfer paradigm. The model is first pre-trained on base classes with abundant data and then transferred to novel classes with a few annotated samples. Despite the substantial progress, the FSOD performance is still far behind satisfactory. During pre-training, due to the co-occurrence between base and novel classes, the model is learned to treat the co-occurred novel classes as backgrounds. During transferring, given scarce samples of novel classes, the model suffers from learning discriminative features to distinguish novel instances from backgrounds and base classes. To overcome the obstacles, we propose a novel framework, Mining Implicit Novel Instances (MINI), to mine the implicit novel instances as auxiliary training samples, which widely exist in abundant base data but are not annotated. MINI comprises an offline mining mechanism and an online mining mechanism. The offline mining mechanism leverages a self-supervised discriminative model to collaboratively mine implicit novel instances with a trained FSOD network. Taking the mined novel instances as auxiliary training samples, the online mining mechanism takes a teacher-student framework to simultaneously update the FSOD network and the mined implicit novel instances on the fly. Extensive experiments on PASCAL VOC and MS-COCO datasets show MINI achieves new state-of-the-art performance on any shot and split. The significant performance improvements demonstrate the superiority of our method.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源