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Change Detection in Satellite Images Using Reconstruction Errors of Joint Autoencoders

机译:利用联合自动编码器的重构误差检测卫星图像中的变化

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With the growing number of open source satellite image time series, such as SPOT or Sentinel-2, the number of potential change detection applications is increasing every year. However, due to the image quality and resolution, the change detection process is a challenge nowadays. In this work, we propose an approach that uses the reconstruction losses of joint autoencoders to detect non-trivial changes (permanent changes and seasonal changes that do not follow common tendency) between two co-registered images in a satellite image time series. The autoencoder aims to learn a transformation model that reconstructs one co-registered image from another. Since trivial changes such as changes in luminosity or seasonal changes between two dates have a tendency to repeat in different areas of the image, their transformation model can be easily learned. However, non-trivial changes tend to be unique and can not be correctly translated from one date to another, hence an elevated reconstruction error where there is change. In this work, we compare two models in order to find the most performing one. The proposed approach is completely unsupervised and gives promising results for an open source time series when compared with other concurrent methods.
机译:随着诸如SPOT或Sentinel-2之类的开源卫星图像时间序列的增长,潜在变化检测应用程序的数量每年都在增加。然而,由于图像质量和分辨率,变化检测过程是当今的挑战。在这项工作中,我们提出了一种方法,该方法使用联合自动编码器的重建损失来检测卫星图像时间序列中两个共同注册的图像之间的非平凡变化(永久变化和季节性变化,而不遵循共同的趋势)。自动编码器旨在学习一种转换模型,该模型可以从另一个图像重构一个共同注册的图像。由于诸如日光度变化或两个日期之间的季节变化之类的琐碎变化有在图像的不同区域重复的趋势,因此可以轻松地学习其变换模型。但是,非平凡的更改往往是唯一的,并且不能从一个日期正确地转换为另一日期,因此存在更改的地方,重建错误会增加。在这项工作中,我们比较了两个模型以找到性能最高的模型。所提出的方法是完全不受监督的,并且与其他并行方法相比,在开源时间序列上可提供令人鼓舞的结果。

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