Object detection has achieved a huge breakthrough with deep neural networks and massive annotated data. However, current detection methods cannot be directly transferred to the scenario where the annotated data is scarce due to the severe overfitting problem. Although few-shot learning and zero-shot learning have been extensively explored in the field of image classification, it is indispensable to design new methods for object detection in the data-scarce scenario since object detection has an additional challenging localization task. Low-Shot Object Detection (LSOD) is an emerging research topic of detecting objects from a few or even no annotated samples, consisting of One-Shot Object Detection (OSOD), Few-Shot Object Detection (FSOD) and Zero-Shot Object Detection (ZSD). This survey provides a comprehensive review of LSOD methods. First, we propose a thorough taxonomy of LSOD methods and analyze them systematically, comprising some extensional topics of LSOD (semi-supervised LSOD, weakly-supervised LSOD and incremental LSOD). Then, we indicate the pros and cons of current LSOD methods with a comparison of their performance. Finally, we discuss the challenges and promising directions of LSOD to provide guidance for future works.
翻译:在深神经网络和大量附加说明的数据中,物体探测取得了巨大的突破,但目前的探测方法不能直接转移到附加说明的数据因严重过大问题而稀缺的假设情况中。虽然在图像分类领域已广泛探索了少数光学学习和零光学习,但设计数据偏差情况中物体探测新方法是不可或缺的,因为物体探测具有另外一项具有挑战性的任务。低温物体探测(LSOD)是一个新出现的研究课题,从少数或甚至没有附加说明的样品中探测物体,这些样品包括单热物体探测(OSOD)、少热物体探测(FSOD)和零热物体探测(ZSD)。这项调查对LSOD方法进行了全面审查。首先,我们建议对LSOD方法进行彻底分类,并系统地分析这些方法,包括LSOD的一些扩展专题(SOD、弱度超强的LSOD和递增的LSOD)。然后,我们指出当前LSOD方法的准和组合,我们讨论其未来走向的挑战。