One-Shot Object Detection with Co-Attention and Co-Excitation
This paper aims to tackle the challenging problem of one-shot object detection. Given a query image patch whose class label is not included in the training data, the goal of the task is to detect all instances of the same class in a target image. To this end, we develop a novel {\em co-attention and...
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Zusammenfassung: | This paper aims to tackle the challenging problem of one-shot object
detection. Given a query image patch whose class label is not included in the
training data, the goal of the task is to detect all instances of the same
class in a target image. To this end, we develop a novel {\em co-attention and
co-excitation} (CoAE) framework that makes contributions in three key technical
aspects. First, we propose to use the non-local operation to explore the
co-attention embodied in each query-target pair and yield region proposals
accounting for the one-shot situation. Second, we formulate a
squeeze-and-co-excitation scheme that can adaptively emphasize correlated
feature channels to help uncover relevant proposals and eventually the target
objects. Third, we design a margin-based ranking loss for implicitly learning a
metric to predict the similarity of a region proposal to the underlying query,
no matter its class label is seen or unseen in training. The resulting model is
therefore a two-stage detector that yields a strong baseline on both VOC and
MS-COCO under one-shot setting of detecting objects from both seen and
never-seen classes. Codes are available at
https://github.com/timy90022/One-Shot-Object-Detection. |
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DOI: | 10.48550/arxiv.1911.12529 |