语义变化检测

Tomoyuki Suzuki, Munetaka Minoguchi, Ryota Suzuki, Akio Nakamura, K. Iwata, Y. Satoh, Hirokatsu Kataoka
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引用次数: 4

摘要

变化检测是研究在不同时间拍摄的两个不同场景图像之间的变化。变化检测方法可以为我们提供图像随时间变化的区域信息。然而,对于应用程序的使用,特别是在灾难调查中,不仅需要以高精度和高分辨率了解在哪里发生了变化,还需要了解发生了什么变化。本文提出了语义变化检测的概念,即在检测到的变化区域中直观地插入语义。除了传统的变化检测方法外,我们主要研究了新的语义分割方法。为了解决这个问题并获得更高的性能,我们提出了对超列表示的改进,以下称为超映射,它有效地使用了卷积神经网络(cnn)获得的卷积映射。我们还采用了由不同图像块捕获的多尺度特征表示。我们将该方法应用于海啸全景变化检测数据集(海啸数据集),并通过语义类对数据集的变化区域进行重新标注。结果表明,我们的多尺度超地图在重新标注的海啸数据集上提供了出色的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Change Detection
Change detection is the study of detecting changes between two different images of a scene taken at different times. The change detection methodology can provide us information in which area images changed time by time. However, for application use, especially on disaster investigation, it is highly required to understand not only where but also what changes are occured in high precision and resolution. The paper proposes the concept of semantic change detection, which involves intuitively inserting semantic meaning into detected change areas. We mainly focus on the novel semantic segmentation in addition to a conventional change detection approach. In order to solve this problem and obtain a high-level of performance, we propose an improvement to the hypercolumns representation, hereafter known as hypermaps, which effectively uses convolutional maps obtained from convolutional neural networks (CNNs). We also employ multi-scale feature representation captured by different image patches. We applied our method to the TSUNAMI panoramic change detection dataset (TSUNAMI dataset), and re-annotated the changed areas of the dataset via semantic classes. The results show that our multi-scale hypermaps provided outstanding performance on the re-annotated TSUNAMI dataset.
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