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On joint classification and compression in a distributed source coding framework

机译:分布式源编码框架中的联合分类和压缩

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In many classification problems of interest, it is desirable to not only classify accurately but also to have access to the "raw data" that was used to do the classification. This naturally leads to the concept of joint classification and compression under system communication (or bandwidth) constraints. A typical system involves a complexity-constrained remote sensing unit and a central processing unit. In this paper, we will address the case of a single remote sensing unit (encoder) and a central processing unit (decoder) and a finite bit rate constraint to abstract the bandwidth-limited channel between the encoder and decoder. The goal is to spend this bit budget in the optimal sense, in terms of classification performance (minimize probability of classification error) as well as to enable reconstruction of the raw data with maximum fidelity (in the rate-distortion sense).
机译:在许多感兴趣的分类问题中,不仅希望准确分类,而且希望能够访问用于分类的“原始数据”。这自然导致了在系统通信(或带宽)约束下联合分类和压缩的概念。典型的系统包括受复杂性限制的遥感单元和中央处理单元。在本文中,我们将解决单个遥感单元(编码器)和中央处理单元(解码器)以及有限位速率约束的情况,以抽象出编码器和解码器之间的带宽受限信道。目的是在分类性能(最小化分类错误的可能性)方面,以最佳意义花费此位预算,并能够以最大保真度(在速率失真的意义上)重建原始数据。

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