Circular target detection algorithm on satellite images based on radial transformation

Signal Processing and Communications Applications Conference(2014)

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摘要
Remote sensing is used in a spreading manner by many governmental and industrial institutions worldwide in recent years. Target detection has an important place among the applications developed using satellite imagery. In this paper, an original circular target detection algorithm has been proposed based on a radial transformation. The algorithm consists of three stages such as pre-processing, target detection, and postprocessing. In the pre-processing stage, bilateral noise reduction filtering and vegetation detection operations are completed which they are required by target detection step. The target detection stage finds the circular target by a radial transformation algorithm and variables obtained from the training, and postprocessing stage carries out the elimination of falsely detected targets by utilizing the vegetation information. The Petroleum Oil Lubricants (POL) depots in the industrial areas and harbors have been chosen as an application area of the proposed algorithm. The algorithm has been trained and tested on a data set which includes 4-band images with Near-Infrared band. Proposed algorithm is able to detect many circular targets with different types and sizes as a consequence of using a full radial transformation search as well as it gives rewarding results on industrial areas and harbors in the experiments conducted.
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关键词
image recognition,learning (artificial intelligence),object detection,remote sensing,transforms,bilateral noise reduction filtering,circular target detection algorithm,falsely detected target elimination,image postprocessing,image preprocessing,nearinfrared band,petroleum oil lubricants depot,radial transformation algorithm,remote sensing,satellite image,training stage,vegetation detection,POL detection,Target detection,high resolution satellite images,remote sensing
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