基于最近邻的非分布检测在遥感场景分类中的应用

Dajana Dimitri'c, M. Simić, Vladimir Risojevi'c
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引用次数: 0

摘要

图像分类的深度学习模型通常在“封闭世界”假设下使用预定义的图像类集进行训练。然而,当部署模型时,它们可能会面临不属于训练期间遇到的类的输入图像。这种类型的场景在遥感图像分类中很常见,其中图像来自不同的地理区域、传感器和成像条件。本文研究了与训练数据不同分布的遥感图像的检测问题——非分布图像的检测问题。提出了一种基于最大软最大概率和最近邻的遥感场景非分布检测基准。实验结果表明,基于最近邻的方法具有令人信服的优势。
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Nearest Neighbor Based Out-of-Distribution Detection in Remote Sensing Scene Classification
Deep learning models for image classification are typically trained under the "closed-world" assumption with a predefined set of image classes. However, when the models are deployed they may be faced with input images not belonging to the classes encountered during training. This type of scenario is common in remote sensing image classification where images come from different geographic areas, sensors, and imaging conditions. In this paper we deal with the problem of detecting remote sensing images coming from a different distribution compared to the training data – out of distribution images. We propose a benchmark for out of distribution detection in remote sensing scene classification and evaluate detectors based on maximum softmax probability and nearest neighbors. The experimental results show convincing advantages of the method based on nearest neighbors.
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