Multi-Objective Heterogeneous Multi-Asset Collection Scheduling Optimization with High-Level Information Fusion

Joel Muteba Kande, R. Abielmona, M. Harb, J. Berger, R. Falcon, E. Petriu
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Abstract

Surveillance of areas of interest through images acquisition is becoming increasingly essential for intelligence services. Several types of platforms equipped with sensors are used to collect good quality images of the areas to be monitored. The evolution of this field has different levels: some studies are only based on improving the quality of the images acquired through sensors, others on the efficiency of platforms such as satellites, aircraft and vessels which will navigate the areas of interest and yet others are based on the optimization of the trajectory of these platforms. Apart from these, intelligence organizations demonstrate an interest in carrying out such missions by sharing their resources. This paper presents a framework whose main objective is to allow intelligence organizations to carry out their observation missions by pooling their platforms with other organizations having similar or geographically close targets. This framework will use multi-objective optimization algorithms based on genetic to optimize such mission planning. Research on sensor fusion will be a key point to this paper, researchers have proven that an image resulting from the fusion of two images from different sensors can provide more information compared to original images. Given that the main goal for observation missions is to collect quality imagery, this work will also use High-Level Information Fusion to optimize mission planning based on image quality and fusion. The results of the experiments not only demonstrate the added value of this framework but also highlight its strengths (through performance metrics) as compared to other similar frameworks.
基于高水平信息融合的多目标异构多资产采集调度优化
通过图像采集对感兴趣的领域进行监视对情报部门来说越来越重要。使用几种配备传感器的平台来收集待监测区域的高质量图像。该领域的发展有不同的层次:一些研究仅基于提高通过传感器获得的图像质量,另一些研究基于卫星、飞机和船只等平台的效率,这些平台将导航感兴趣的领域,还有一些研究基于这些平台的轨迹优化。除此之外,情报组织也表示有兴趣通过分享资源来执行这类任务。本文提出了一个框架,其主要目标是允许情报组织通过与具有相似或地理上接近目标的其他组织共享平台来执行其观察任务。该框架将使用基于遗传的多目标优化算法来优化此类任务规划。对传感器融合的研究将是本文的重点,研究人员已经证明,来自不同传感器的两幅图像融合后的图像可以提供比原始图像更多的信息。鉴于观测任务的主要目标是收集高质量的图像,本工作还将利用高水平信息融合来优化基于图像质量和融合的任务规划。实验结果不仅证明了该框架的附加价值,而且与其他类似框架相比,突出了它的优势(通过性能指标)。
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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