Object identification and classification in a high resolution satellite data using data mining techniques for knowledge extraction

Nikhil Mantrawadi, Mais Nijim, Young Lee
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引用次数: 8

Abstract

The interpretation of remotely sensed images in a spatiotemporal context is becoming a valuable research topic. Today's optical sensor systems on satellite provide large-area images with 1-m resolution and better, which can deliver complement information to traditional acquired data. However, the constant growth of data volume in remote sensing imaging makes reaching conclusions based on collected data a challenging task. One of the main problems that arise during the data mining process is treating data that contains temporal information. However, two important issues must be considered in order to provide more accurate decisions on object identification and pattern recognition. First, the continuous growth of the dataset storage space and the advances in remote sensing sensors which generate a huge amount of satellite images making the manual image interpretation a difficult task. Second, the space/time components are inherent to satellite images; systems being developed to identify objects must take into account the spatiotemporal context to better interpret the collected image data. Spatial relations between objects are widely used in context-based image retrieval. This paper outlines the challenges and proposes in creation of a data mines capable of supporting the requirements of the system, which, inevitably demand a high level of cooperation between many disparate sources of spatial data.
在高分辨率卫星数据中利用数据挖掘技术进行目标识别与分类的知识提取
遥感影像的时空解译正成为一个有价值的研究课题。目前的卫星光学传感器系统可以提供1米以上分辨率的大面积图像,可以对传统的采集数据提供补充信息。然而,随着遥感成像数据量的不断增长,根据收集到的数据得出结论是一项具有挑战性的任务。在数据挖掘过程中出现的主要问题之一是处理包含时间信息的数据。然而,为了在对象识别和模式识别方面提供更准确的决策,必须考虑两个重要问题。首先,数据集存储空间的不断增长和遥感传感器的进步产生了大量的卫星图像,使得人工图像解译成为一项艰巨的任务。其次,空间/时间分量是卫星图像固有的;正在开发的识别物体的系统必须考虑到时空背景,以便更好地解释收集到的图像数据。对象间的空间关系在基于上下文的图像检索中得到了广泛的应用。本文概述了所面临的挑战,并提出了创建能够支持系统需求的数据挖掘的建议,这不可避免地要求许多不同空间数据源之间的高水平合作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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