Classification of spatially enriched pixel time series with convolutional neural networks

Mohamed Chelali, Camille Kurtz, A. Puissant, N. Vincent
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引用次数: 1

Abstract

Satellite Image Time Series (SITS), MRI sequences, and more generally image time series, constitute $2D+t$ data providing spatial and temporal information about an observed scene. Given a pattern recognition task such as image classification, considering jointly such rich information is crucial during the decision process. Nevertheless, due to the complex representation of the data-cube, spatio-temporal features extraction from $2D+t$ data remains difficult to handle. We present in this article an approach to learn such features from this data, and then to proceed to their classification. Our strategy consists in enriching pixel time series with spatial information. It is based on Random Walk to build a novel segment-based representation of the data, passing from a $2D+t$ dimension to a $2D$ one, without loosing too much spatial information. Such new representation is then involved in an end-to-end learning process with a classical 2D Convolutional Neural Network (CNN) in order to learn spatiotemporal features for the classification of image time series. Our approach is evaluated on a remote sensing application for the mapping of agricultural crops. Thanks to a visual attention mechanism, the proposed $2D$ spatio-temporal representation makes also easier the interpretation of a SITS to understand spatiotemporal phenomenons related to soil management practices.
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基于卷积神经网络的空间丰富像素时间序列分类
卫星图像时间序列(sit)、MRI序列和更普遍的图像时间序列构成了2D+t数据,提供了观测场景的空间和时间信息。对于像图像分类这样的模式识别任务,综合考虑这些丰富的信息在决策过程中至关重要。然而,由于数据立方体的复杂表示,从$2D+ $ t数据中提取时空特征仍然难以处理。在本文中,我们提出了一种从这些数据中学习这些特征的方法,然后对它们进行分类。我们的策略是用空间信息丰富像素时间序列。它基于随机漫步来构建一种新的基于片段的数据表示,从$2D+ $ t维度传递到$2D维度,而不会丢失太多的空间信息。然后使用经典的2D卷积神经网络(CNN)进行端到端学习过程,以学习用于图像时间序列分类的时空特征。我们的方法在农业作物测绘的遥感应用中进行了评估。由于视觉注意机制,所提出的2D时空表征也使解释sit更容易理解与土壤管理实践相关的时空现象。
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