A satellite image is a remotely sensed image data, where each pixel represents a specific location on earth. The pixel value recorded is the reflection radiation from the earth's surface at that location. Multispectral images are those that capture image data at specific frequencies across the electromagnetic spectrum as compared to Panchromatic images which are sensitive to all wavelength of visible light. Because of the high resolution and high dimensions of these images, they create difficulties for clustering techniques to efficiently detect clusters of different sizes, shapes and densities as a trade off for fast processing time. In this paper we propose a grid-density based clustering technique for identification of objects. We also introduce an approach to classify a satellite image data using a rule induction based machine learning algorithm. The object identification and classification methods have been validated using several synthetic and benchmark datasets.
翻译:卫星图像是一种遥感图像数据,其中每个像素代表着地球上的一个特定位置。记录到的像素值是来自地球表面在该位置的反射辐射。多光谱图像是那些在电磁频谱的特定频率上采集图像数据,而与对可见光所有波长敏感的全色图像相比,这些图像与全色图像是相较。由于这些图像的分辨率高,尺寸高,尺寸高,因此难以进行集群技术,以有效探测不同大小、形状和密度的群集,作为快速处理时间的交换。在本文中,我们提出了一种基于电网密度的集群技术,用于识别物体。我们还采用了一种方法,使用基于规则的诱导机器学习算法对卫星图像数据进行分类。由于这些图像的分辨率高和尺寸高,因此难以利用若干合成和基准数据集对物体识别和分类方法进行验证。