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Key Features for ATA / ATR Database Design in Missile Systems

机译:导弹系统ATA / ATR数据库设计的主要特点

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Automatic target acquisition (ATA) and automatic target recognition (ATR) are two vital tasks for missile systems, and having a robust detection and recognition algorithm is crucial for overall system performance. In order to have a robust target detection and recognition algorithm, an extensive image database is required. Automatic target recognition algorithms use the database of images in training and testing steps of algorithm. This directly affects the recognition performance, since the training accuracy is driven by the quality of the image database. In addition, the performance of an automatic target detection algorithm can be measured effectively by using an image database. There are two main ways for designing an ATA / ATR database. The first and easy way is by using a scene generator. A scene generator can model the objects by considering its material information, the atmospheric conditions, detector type and the territory. Designing image database by using a scene generator is inexpensive and it allows creating many different scenarios quickly and easily. However the major drawback of using a scene generator is its low fidelity, since the images are created virtually. The second and difficult way is designing it using real-world images. Designing image database with real-world images is a lot more costly and time consuming; however it offers high fidelity, which is critical for missile algorithms. In this paper, critical concepts in ATA / ATR database design with real-world images are discussed. Each concept is discussed in the perspective of ATA and ATR separately. For the implementation stage, some possible solutions and trade-offs for creating the database are proposed, and all proposed approaches are compared to each other with regards to their pros and cons.
机译:自动目标采集(ATA)和自动目标识别(ATR)是导弹系统的两个重要任务,具有鲁棒的检测和识别算法对于整体系统性能至关重要。为了具有稳健的目标检测和识别算法,需要一个广泛的图像数据库。自动目标识别算法使用训练和测试步骤中的图像数据库。这直接影响识别性能,因为训练准确性由图像数据库的质量驱动。另外,通过使用图像数据库可以有效地测量自动目标检测算法的性能。设计ATA / ATR数据库有两种主要方法。第一种和简单的方法是使用场景发生器。场景发生器可以通过考虑其材料信息,大气条件,探测器类型和领土来模拟物体。使用场景发生器设计图像数据库价格便宜,它允许快速轻松地创建许多不同的场景。然而,使用场景发生器的主要缺点是其低保真度,因为图像实际上创建了图像。第二个和艰难的方式正在使用真实世界的图像设计它。使用现实世界的图像设计图像数据库是更昂贵和耗时的程度;然而,它提供了高保真度,这对于导弹算法至关重要。在本文中,讨论了ATA / ATR数据库设计的关键概念,具有现实世界图像。每个概念分别以ATA和ATR的角度讨论。对于实施阶段,提出了一些可能的解决方案和用于创建数据库的权衡,以及所有提议的方法都与其优势和缺点相吻合。

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