Statistical pattern recognition in remote sensing

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Remote sensing with sensors mounted on satellites or aircrafts is much needed for resource management, environmental monitoring, disaster response, and homeland defense. Remote sensing data considered include those from multispectral, hyperspectral, radar, optical, and infrared sensors. Classification is often one of the major tasks in information processing. For example, we need to identify vegetations, waterways, and man-made structures from remote sensing of earth. The large amount of data available makes remote sensing data uniquely suitable for statistical pattern recognition. This paper will address several issues on statistical pattern recognition that are related to information processing in remote sensing. Though the paper is largely tutorial in nature, some specific issues considered are image models for characterization of contextual information, neural networks for image classification, and the performance measures.Either to supplement the capability of sensors or to effectively utilize the enormous amount of sensor data, many advances in statistical pattern recognition can be very useful in machine recognition of the data. The potentials and opportunities of using statistical pattern recognition in remote sensing are indeed unlimited.

论文关键词:Remote sensing,Statistical pattern classification,Contextual information,Neural networks,Support vector machine,Vector 2-D autoregressive time series,Markov random field

论文评审过程:Received 15 February 2008, Revised 17 April 2008, Accepted 18 April 2008, Available online 4 May 2008.

论文官网地址:https://doi.org/10.1016/j.patcog.2008.04.013