Feature Decoupling-Recycling Network for Fast Interactive Segmentation
Huimin Zeng, Weinong Wang, Xin Tao, Zhiwei Xiong, Yu-Wing Tai, Wenjie, Pei

TL;DR
The paper introduces FDRN, a novel network that decouples and recycles features in interactive segmentation to significantly improve efficiency and robustness across various datasets and tasks.
Contribution
It proposes a decoupling-recycling strategy that reduces redundant feature extraction, enhancing efficiency and applicability in interactive segmentation tasks.
Findings
Up to 4.25x faster in challenging scenarios
Effective across multiple datasets and modalities
Robust against misleading user guidance
Abstract
Recent interactive segmentation methods iteratively take source image, user guidance and previously predicted mask as the input without considering the invariant nature of the source image. As a result, extracting features from the source image is repeated in each interaction, resulting in substantial computational redundancy. In this work, we propose the Feature Decoupling-Recycling Network (FDRN), which decouples the modeling components based on their intrinsic discrepancies and then recycles components for each user interaction. Thus, the efficiency of the whole interactive process can be significantly improved. To be specific, we apply the Decoupling-Recycling strategy from three perspectives to address three types of discrepancies, respectively. First, our model decouples the learning of source image semantics from the encoding of user guidance to process two types of input domains…
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Taxonomy
TopicsAdvanced Neural Network Applications · Domain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications
