arXiv Analytics

Sign in

arXiv:1803.01529 [cs.CV]AbstractReferencesReviewsResources

LSTD: A Low-Shot Transfer Detector for Object Detection

Hao Chen, Yali Wang, Guoyou Wang, Yu Qiao

Published 2018-03-05Version 1

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.

Related articles: Most relevant | Search more
arXiv:1611.06474 [cs.CV] (Published 2016-11-20)
Nazr-CNN: Object Detection and Fine-Grained Classification in Crowdsourced UAV Images
arXiv:1711.05471 [cs.CV] (Published 2017-11-15)
On the Utility of Context (or the Lack Thereof) for Object Detection
arXiv:1809.06006 [cs.CV] (Published 2018-09-17)
Evaluating Merging Strategies for Sampling-based Uncertainty Techniques in Object Detection