实例分割模型的鲁棒性基准测试。

IF 10.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE transactions on neural networks and learning systems Pub Date : 2023-09-18 DOI:10.1109/TNNLS.2023.3310985
Yusuf Dalva, Hamza Pehlivan, Said Fahri Altindis, Aysegul Dundar
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引用次数: 0

摘要

本文针对真实世界的图像损坏以及域外图像集合(例如,由不同于训练数据集的设置捕获的图像),对实例分割模型进行了全面评估。域外图像评估显示了模型的泛化能力,这是现实世界应用的一个重要方面,也是域自适应的一个广泛研究的主题。当为现实世界的应用程序设计实例分割模型并选择现成的预训练模型直接用于手头的任务时,这些提出的鲁棒性和泛化评估是重要的。具体而言,这项基准研究包括最先进的网络架构、网络主干、规范化层、从头开始训练的模型与预训练的网络,以及多任务训练对鲁棒性和泛化的影响。通过这项研究,我们获得了一些见解。例如,我们发现组规范化(GN)增强了网络在破坏中的鲁棒性,其中图像内容保持不变,但在顶部添加了破坏。另一方面,批量归一化(BN)提高了模型在图像特征统计数据发生变化的不同数据集上的泛化能力。我们还发现,单级检测器不能很好地推广到比其训练大小更大的图像分辨率。另一方面,多级检测器可以容易地用于不同尺寸的图像。我们希望我们的全面研究将推动开发更稳健、更可靠的实例分割模型。
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Benchmarking the Robustness of Instance Segmentation Models.

This article presents a comprehensive evaluation of instance segmentation models with respect to real-world image corruptions as well as out-of-domain image collections, e.g., images captured by a different set-up than the training dataset. The out-of-domain image evaluation shows the generalization capability of models, an essential aspect of real-world applications, and an extensively studied topic of domain adaptation. These presented robustness and generalization evaluations are important when designing instance segmentation models for real-world applications and picking an off-the-shelf pretrained model to directly use for the task at hand. Specifically, this benchmark study includes state-of-the-art network architectures, network backbones, normalization layers, models trained starting from scratch versus pretrained networks, and the effect of multitask training on robustness and generalization. Through this study, we gain several insights. For example, we find that group normalization (GN) enhances the robustness of networks across corruptions where the image contents stay the same but corruptions are added on top. On the other hand, batch normalization (BN) improves the generalization of the models across different datasets where statistics of image features change. We also find that single-stage detectors do not generalize well to larger image resolutions than their training size. On the other hand, multistage detectors can easily be used on images of different sizes. We hope that our comprehensive study will motivate the development of more robust and reliable instance segmentation models.

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来源期刊
IEEE transactions on neural networks and learning systems
IEEE transactions on neural networks and learning systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
CiteScore
23.80
自引率
9.60%
发文量
2102
审稿时长
3-8 weeks
期刊介绍: The focus of IEEE Transactions on Neural Networks and Learning Systems is to present scholarly articles discussing the theory, design, and applications of neural networks as well as other learning systems. The journal primarily highlights technical and scientific research in this domain.
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