Reducing Training Data Using Pre-Trained Foundation Models: A Case Study on Traffic Sign Segmentation Using the Segment Anything Model.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-09-07 DOI:10.3390/jimaging10090220
Sofia Henninger, Maximilian Kellner, Benedikt Rombach, Alexander Reiterer
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Abstract

The utilization of robust, pre-trained foundation models enables simple adaptation to specific ongoing tasks. In particular, the recently developed Segment Anything Model (SAM) has demonstrated impressive results in the context of semantic segmentation. Recognizing that data collection is generally time-consuming and costly, this research aims to determine whether the use of these foundation models can reduce the need for training data. To assess the models' behavior under conditions of reduced training data, five test datasets for semantic segmentation will be utilized. This study will concentrate on traffic sign segmentation to analyze the results in comparison to Mask R-CNN: the field's leading model. The findings indicate that SAM does not surpass the leading model for this specific task, regardless of the quantity of training data. Nevertheless, a knowledge-distilled student architecture derived from SAM exhibits no reduction in accuracy when trained on data that have been reduced by 95%.

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使用预训练基础模型减少训练数据:使用 Segment Anything 模型进行交通标志分割的案例研究。
利用稳健的预训练基础模型,可以简单地适应正在进行的特定任务。特别是最近开发的 "任意分割模型"(Segment Anything Model,SAM)在语义分割方面取得了令人印象深刻的成果。由于数据收集通常耗时且成本高昂,本研究旨在确定使用这些基础模型能否减少对训练数据的需求。为了评估模型在训练数据减少的条件下的表现,将使用五个语义分割测试数据集。本研究将集中于交通标志分割,以分析与该领域领先模型 Mask R-CNN 相比的结果。研究结果表明,无论训练数据的数量如何,SAM 在这一特定任务中都没有超越领先模型。不过,从 SAM 衍生出的知识蒸馏学生架构在训练减少了 95% 的数据时,准确率并没有降低。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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