Recognition and identification of target images using feature based retrieval in UAV missions

Shweta Singh, D. V. Rao
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引用次数: 5

Abstract

With the introduction of unmanned air vehicles as force multipliers in the defense services worldwide, automatic recognition and identification of ground based targets has become an important area of research in the defense community. Due to inherent instabilities in smaller unmanned platforms, image blurredness and distortion need to be addressed for the successful recognition of the target. In this paper, an image enhancement technique that can improve images' quality acquired by an unmanned system is proposed. An image de-blurring technique based on blind de-convolution algorithm which adaptively enhances the edges of characters and wipes off blurredness effectively is proposed. A content-based image retrieval technique based on features extraction to generate an image description and a compact feature vector that represents the visual information, color, texture and shape is used with a minimum distance algorithm to effectively retrieve the plausible target images from a library of images stored in a target folder. This methodology was implemented for planning and gaming the UAV/UCAV missions in the Air Warfare Simulation System.
无人机任务中基于特征检索的目标图像识别与识别
随着无人飞行器作为力量倍增器在世界范围内的应用,地面目标的自动识别和识别已成为防务界的一个重要研究领域。由于小型无人平台固有的不稳定性,为了成功识别目标,需要解决图像模糊和失真问题。本文提出了一种提高无人系统图像质量的图像增强技术。提出了一种基于盲反卷积算法的图像去模糊技术,该技术能自适应增强字符的边缘,有效地消除模糊。采用基于内容的图像检索技术,基于特征提取生成图像描述和表示视觉信息、颜色、纹理和形状的紧凑特征向量,并采用最小距离算法从存储在目标文件夹中的图像库中有效检索出可信的目标图像。该方法在空战模拟系统中用于UAV/UCAV任务的规划和博弈。
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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