Abstract

The combination of transfer learning and remote sensing image processing technology can effectively improve the automation level of image information extraction from a remote sensing time series. However, in the processing of polarimetric synthetic aperture radar (PolSAR) time-series images, the existing transfer learning methods often cannot make full use of the time-series information of the images, relying too much on the labeled samples in the target domain. Furthermore, the speckle noise inherent in synthetic aperture radar (SAR) imagery aggravates the difficulty of the manual selection of labeled samples, so these methods have difficulty in meeting the processing requirements of large data volumes and high efficiency. In lieu of these problems and the spatio-temporal relational knowledge of objects in time-series images, this paper introduces the theory of time-series clustering and proposes a new three-phase time-series clustering algorithm. Due to the full use of the inherent characteristics of the PolSAR images, this algorithm can accurately transfer the labels of the source domain samples to those samples that have not changed in the whole time series without relying on the target domain labeled samples, so as to realize transductive sample label transfer for PolSAR time-series images. Experiments were carried out using three different sets of PolSAR time-series images and the proposed method was compared with two of the existing methods. The experimental results showed that the transfer precision of the proposed method reaches a high level with different data and different objects and it performs significantly better than the existing methods. With strong reliability and practicability, the proposed method can provide a new solution for the rapid information extraction of remote sensing image time series.

Highlights

  • Earth observation technology that is remote sensing-based on time-series images can obtain the dynamic change information of the Earth’s surface

  • Because the labeled samples in the target domain were different in each run of the experiments, the experimental results showed that the transfer precision of transfer bagging (TrBagg) and based ensemble transfer learning (BETL) varies over a large range

  • In order to solve the problems of the insufficient utilization of the information in time-series images and the dependence on manual sample selection existing in many of the current transfer learning methods when applied to information extraction from long time series of remote sensing images, a new three-phase time-series clustering algorithm for polarimetric synthetic aperture radar (PolSAR) time-series images is proposed for transductive label transfer

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Summary

Introduction

Earth observation technology that is remote sensing-based on time-series images can obtain the dynamic change information of the Earth’s surface. It has broad application prospects in the fields of resource surveying, emergency response, and surface monitoring. At present, the processing and analysis of time-series images, especially the collection of training samples, often requires a lot of manual intervention, and it is difficult to meet the need for the rapid processing of time-series images. The processed historical remote sensing data contain a lot of information and how to effectively use the historical information to assist with the processing and analysis of time-series images, and improve the automation level of time-series remote sensing Earth observation technology, is an important problem that needs to be urgently solved. A source task, a target domain, and a target task, transfer learning aims to improve the performance of the target task in the target domain using the knowledge in the source domain and source task [1]

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