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An MDL-based multi-task classification and reconstruction algorithm

机译:基于MDL的多任务分类和重建算法

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In the multi-task compressive sensing (MCS) algorithm, multi-task specifically denotes the set of different compressive measurements. The MCS algorithm can utilize all tasks together to reconstruct original signals and its reconstruction performance outperforms that of the single-task compressive sensing algorithm. However, when the original signals belong to different clusters (it means that the original signals in every cluster have similar structure), we can not utilize all tasks together to reconstruct original signals, and should make signal reconstruction after classifying the tasks. In view of this problem, we propose a minimum description length (MDL) principle based multi-task classification and reconstruction algorithm. First, we establish the classification principle of the multi-task reconstruction algorithm, by which we can obtain the number of clusters. Then, the multi-task reconstruction algorithm is carried out for every cluster respectively. Example results demonstrate the better classification and reconstruction performance of the proposed method compared to other algorithms.
机译:在多任务压缩检测(MCS)算法中,多任务专门表示不同压缩测量的集合。 MCS算法可以将所有任务一起使用以重建原始信号及其重建性能优于单任务压缩感测算法的重建性能。但是,当原始信号属于不同的群集时(这意味着每个群集中的原始信号具有相似的结构),我们无法将所有任务一起使用以重建原始信号,并且应该在分类任务后进行信号重建。鉴于此问题,我们提出了最小描述长度(MDL)基本的多任务分类和重建算法。首先,我们建立了多任务重建算法的分类原理,通过它可以获得群集的数量。然后,分别为每个群集执行多任务重建算法。示例结果表明,与其他算法相比,该方法的更好分类和重建性能。

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