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Joint Tracking and Classification Based on Bayes Joint Decision and Estimation

机译:基于贝叶斯联合决策和估计的联合跟踪和分类

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Many problems involve both decision and estimation where the performance of decision and estimation affects each other. They are usually solved by a two-stage strategy: decision-then-estimation or estimation-then-decision, which suffers from several serious drawbacks. A more integrated solution is preferred. Such an approach was proposed in [14]. It is based on a new Bayes risk as a generalization of those for decision and estimation, respectively. It is Bayes optimal and can be applied to a wide spectrum of joint decision and estimation (JDE) problems. In this paper, we apply that approach to the important problem of joint tracking and classification of targets, which has received a great deal of attention in recent years. A simple yet representative example is given and the performance of the JDE solution is compared with the traditional methods. Issues with design of parameters needed for the new approach are addressed.
机译:许多问题涉及决策和估计,其中决策和估计的性能相互影响。它们通常由两级战略解决:决策 - 然后估计或估算 - 然后决定,这遭受了几种严重缺点。更优选更集成的解决方案。在[14]中提出了这种方法。它基于新的贝叶斯风险作为决策和估计的概括。它是贝叶斯最佳的,可以应用于广泛的联合决策和估计(JDE)问题。在本文中,我们将这种方法应用于联合跟踪和目标分类的重要问题,近年来已经受到了大量的关注。给出了一个简单但代表性的例子,并将JDE解决方案的性能与传统方法进行比较。解决了新方法所需参数设计的问题。

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