Recent advances in object detection are mainly driven by deep learning with large-scale detection benchmarks. However, the fully-annotated training set is often limited for a target detection task, which may deteriorate the performance of deep detectors. To address this challenge, we propose a novel low-shot transfer detector (LSTD) in this paper, where we leverage rich source-domain knowledge to construct an effective target-domain detector with very few training examples. The main contributions are described as follows. First, we design a flexible deep architecture of LSTD to alleviate transfer difficulties in low-shot detection. This architecture can integrate the advantages of both SSD and Faster RCNN in a unified deep framework. Second, we introduce a novel regularized transfer learning framework for low-shot detection, where the transfer knowledge (TK) and background depression (BD) regularizations are proposed to leverage object knowledge respectively from source and target domains, in order to further enhance fine-tuning with a few target images. Finally, we examine our LSTD on a number of challenging low-shot detection experiments, where LSTD outperforms other state-of-the-art approaches. The results demonstrate that LSTD is a preferable deep detector for low-shot scenarios.
翻译:在物体探测方面,最近的进展主要是通过大规模探测基准的深层次学习推动的。然而,经过充分说明的培训组对于目标探测任务往往有限,这可能使深层探测器的性能恶化。为了应对这一挑战,我们在本文件中提出一个新的低光传输探测器(LSTD)新颖的低光传输探测器(LSTD),我们利用丰富的源域知识来建立一个有效的目标域探测器,培训实例很少。主要贡献如下。首先,我们设计了一个灵活的LSTD深层结构,以缓解低光探测中的转移困难。这一结构可以将SSD和快速RCNNN的优势整合到一个统一的深度框架中。第二,我们引入了一个新型的低光光探测常规化转移学习框架,其中提出了转移知识(TK)和背景抑郁(BD)的正规化,以分别利用源域和目标域的物体知识,以进一步加强对几个目标图像的微调。最后,我们研究了我们的LSTD的低光谱探测实验,其中LSTD优于其他状态的低光谱。