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A multivariable optical remote sensing image feature discretization method applied to marine vessel targets recognition

机译:应用于船舶目标识别的多变量光学遥感图像特征离散化方法

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摘要

The effective extraction of continuous features in ocean optical remote sensing image is the key to achieve the automatic detection and identification for marine vessel targets. Since many of the existing data mining algorithms can only deal with discrete attributes, it is necessary to transform the continuous features into discrete ones for adapting to these intelligent algorithms. However, most of the current discretization methods do not consider the mutual exclusion within the attribute set when selecting breakpoints, and cannot guarantee that the indiscernible relationship of information system is not destroyed. Obviously, they are not suitable for processing ocean optical remote sensing data with multiple features. Aiming at this problem, a multivariable optical remote sensing image feature discretization method applied to marine vessel targets recognition is presented in this paper. Firstly, the information equivalent model of remote sensing image is established based on the theories of information entropy and rough set. Secondly, the change extent of indiscernible relationship in the model before and after discretization is evaluated. Thirdly, multiple scans are executed for each band until the termination condition is satisfied for generating the optimal number of intervals. Finally, we carry out the simulation analysis of the high-resolution remote sensing image data collected near the coast of South China Sea. In addition, we also compare the proposed method with the current mainstream discretization algorithms. Experiments validate that the proposed method has better comprehensive performance in terms of interval number, data consistency, running time, prediction accuracy and recognition rate.
机译:海洋光纤遥感图像中的连续特征的有效提取是实现海洋船舶靶标的自动检测和识别的关键。由于许多现有的数据挖掘算法只能处理离散属性,因此必须将连续功能转换成用于适应这些智能算法的离散特征。然而,大多数当前离散化方法在选择断点时不考虑属性集中的互排,并且不能保证信息系统的毫无辨认的关系不会被销毁。显然,它们不适合处理具有多个功能的海洋光学遥感数据。针对这个问题,本文介绍了应用于船舶目标识别的多变量光学遥感图像特征离散化方法。首先,基于信息熵和粗糙集的理论建立遥感图像的信息等效模型。其次,评估了离散化之前和之后模型中难以清晰的关系的变化范围。第三,对每个频带执行多次扫描,直到满足终止条件,以产生最佳的间隔数。最后,我们对南海海岸附近收集的高分辨率遥感图像数据进行了仿真分析。此外,我们还将提出的方法与当前的主流离散化算法进行比较。实验验证了所提出的方法在间隔数,数据一致性,运行时间,预测准确度和识别率方面具有更好的全面性能。

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