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Main Authors: Ge, Jiannan, Xie, Lingxi, Xie, Hongtao, Li, Pandeng, Zhang, Xiaopeng, Zhang, Yongdong, Tian, Qi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.05667
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author Ge, Jiannan
Xie, Lingxi
Xie, Hongtao
Li, Pandeng
Zhang, Xiaopeng
Zhang, Yongdong
Tian, Qi
author_facet Ge, Jiannan
Xie, Lingxi
Xie, Hongtao
Li, Pandeng
Zhang, Xiaopeng
Zhang, Yongdong
Tian, Qi
contents A serious issue that harms the performance of zero-shot visual recognition is named objective misalignment, i.e., the learning objective prioritizes improving the recognition accuracy of seen classes rather than unseen classes, while the latter is the true target to pursue. This issue becomes more significant in zero-shot image segmentation because the stronger (i.e., pixel-level) supervision brings a larger gap between seen and unseen classes. To mitigate it, we propose a novel architecture named AlignZeg, which embodies a comprehensive improvement of the segmentation pipeline, including proposal extraction, classification, and correction, to better fit the goal of zero-shot segmentation. (1) Mutually-Refined Proposal Extraction. AlignZeg harnesses a mutual interaction between mask queries and visual features, facilitating detailed class-agnostic mask proposal extraction. (2) Generalization-Enhanced Proposal Classification. AlignZeg introduces synthetic data and incorporates multiple background prototypes to allocate a more generalizable feature space. (3) Predictive Bias Correction. During the inference stage, AlignZeg uses a class indicator to find potential unseen class proposals followed by a prediction postprocess to correct the prediction bias. Experiments demonstrate that AlignZeg markedly enhances zero-shot semantic segmentation, as shown by an average 3.8% increase in hIoU, primarily attributed to a 7.1% improvement in identifying unseen classes, and we further validate that the improvement comes from alleviating the objective misalignment issue.
format Preprint
id arxiv_https___arxiv_org_abs_2404_05667
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publishDate 2024
record_format arxiv
spellingShingle AlignZeg: Mitigating Objective Misalignment for Zero-shot Semantic Segmentation
Ge, Jiannan
Xie, Lingxi
Xie, Hongtao
Li, Pandeng
Zhang, Xiaopeng
Zhang, Yongdong
Tian, Qi
Computer Vision and Pattern Recognition
A serious issue that harms the performance of zero-shot visual recognition is named objective misalignment, i.e., the learning objective prioritizes improving the recognition accuracy of seen classes rather than unseen classes, while the latter is the true target to pursue. This issue becomes more significant in zero-shot image segmentation because the stronger (i.e., pixel-level) supervision brings a larger gap between seen and unseen classes. To mitigate it, we propose a novel architecture named AlignZeg, which embodies a comprehensive improvement of the segmentation pipeline, including proposal extraction, classification, and correction, to better fit the goal of zero-shot segmentation. (1) Mutually-Refined Proposal Extraction. AlignZeg harnesses a mutual interaction between mask queries and visual features, facilitating detailed class-agnostic mask proposal extraction. (2) Generalization-Enhanced Proposal Classification. AlignZeg introduces synthetic data and incorporates multiple background prototypes to allocate a more generalizable feature space. (3) Predictive Bias Correction. During the inference stage, AlignZeg uses a class indicator to find potential unseen class proposals followed by a prediction postprocess to correct the prediction bias. Experiments demonstrate that AlignZeg markedly enhances zero-shot semantic segmentation, as shown by an average 3.8% increase in hIoU, primarily attributed to a 7.1% improvement in identifying unseen classes, and we further validate that the improvement comes from alleviating the objective misalignment issue.
title AlignZeg: Mitigating Objective Misalignment for Zero-shot Semantic Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.05667