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Target classification strategies

机译:目标分类策略

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Target classification algorithms have generally kept pace with developments in the academic and commercial sectors since the 1970s. However, most recently, investment into object classification by internet companies and various Human Brain Projects have far outpaced that of the defense sector. Implications are noteworthy. There are some unique characteristics of the military classification problem. Target classification is not solely an algorithm design problem, but is part of a larger system design task. The design flows down from a concept of operations (ConOps) and key performance parameters (KPPs). Inputs are image and/or signal data and time-synchronized metadata. The operation is real-time. The implementation minimizes size, weight and power (SWaP). The output must be conveyed to a time-strapped operator who understands the rules of engagement. It is assumed that the adversary is actively trying to defeat recognition. The target list is often mission dependent, not necessarily a closed set, and may change on a daily basis. It is highly desirable to obtain sufficiently comprehensive training and testing data sets, but costs of doing so are very high and data on certain target types are scarce. The training data may not be representative of battlefield conditions suggesting the avoidance of highly tuned designs. A number of traditional and emerging target classification strategies are reviewed in the context of the military target problem.
机译:自1970年代以来,目标分类算法通常与学术和商业领域的发展保持同步。但是,最近,互联网公司和各种“人脑计划”对物体分类的投资远远超过了国防部门。含义是值得注意的。军事分类问题具有一些独特的特征。目标分类不仅是算法设计问题,而且是较大系统设计任务的一部分。设计从操作(ConOps)和关键性能参数(KPP)的概念出发。输入是图像和/或信号数据以及时间同步的元数据。该操作是实时的。该实现使尺寸,重量和功率(SWaP)最小化。必须将输出传达给了解参与规则的有时间限制的操作员。假定对手正在积极尝试挫败认可。目标列表通常取决于任务,不一定是封闭的,并且可能每天更改。非常需要获得足够全面的培训和测试数据集,但是这样做的成本非常高,并且缺乏某些目标类型的数据。训练数据可能无法代表战场条件,这表明避免了高度调整的设计。在军事目标问题的背景下,回顾了许多传统的和新兴的目标分类策略。

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