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Papers/ZegCLIP: Towards Adapting CLIP for Zero-shot Semantic Segm...

ZegCLIP: Towards Adapting CLIP for Zero-shot Semantic Segmentation

Ziqin Zhou, BoWen Zhang, Yinjie Lei, Lingqiao Liu, Yifan Liu

2022-12-07CVPR 2023 1Zero-Shot Semantic SegmentationSemantic SegmentationZero-Shot Learning
PaperPDFCode(official)

Abstract

Recently, CLIP has been applied to pixel-level zero-shot learning tasks via a two-stage scheme. The general idea is to first generate class-agnostic region proposals and then feed the cropped proposal regions to CLIP to utilize its image-level zero-shot classification capability. While effective, such a scheme requires two image encoders, one for proposal generation and one for CLIP, leading to a complicated pipeline and high computational cost. In this work, we pursue a simpler-and-efficient one-stage solution that directly extends CLIP's zero-shot prediction capability from image to pixel level. Our investigation starts with a straightforward extension as our baseline that generates semantic masks by comparing the similarity between text and patch embeddings extracted from CLIP. However, such a paradigm could heavily overfit the seen classes and fail to generalize to unseen classes. To handle this issue, we propose three simple-but-effective designs and figure out that they can significantly retain the inherent zero-shot capacity of CLIP and improve pixel-level generalization ability. Incorporating those modifications leads to an efficient zero-shot semantic segmentation system called ZegCLIP. Through extensive experiments on three public benchmarks, ZegCLIP demonstrates superior performance, outperforming the state-of-the-art methods by a large margin under both "inductive" and "transductive" zero-shot settings. In addition, compared with the two-stage method, our one-stage ZegCLIP achieves a speedup of about 5 times faster during inference. We release the code at https://github.com/ZiqinZhou66/ZegCLIP.git.

Results

TaskDatasetMetricValueModel
Zero-Shot Semantic SegmentationPASCAL VOCInductive Setting hIoU84.3ZegCLIP
Zero-Shot Semantic SegmentationPASCAL VOCTransductive Setting hIoU91.1ZegCLIP
Zero-Shot Semantic SegmentationCOCO-StuffInductive Setting hIoU40.8ZegCLIP
Zero-Shot Semantic SegmentationCOCO-StuffTransductive Setting hIoU48.5ZegCLIP

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