Multilinear Compressive Learning (MCL) is an efficient signal acquisition and learning paradigm for multidimensional signals. The level of signal compression affects the detection or classification performance of a MCL model, with higher compression rates often associated with lower inference accuracy. However, higher compression rates are more amenable to a wider range of applications, especially those that require low operating bandwidth and minimal energy consumption such as Internet-of-Things (IoT) applications. Many communication protocols provide support for adaptive data transmission to maximize the throughput and minimize energy consumption. By developing compressive sensing and learning models that can operate with an adaptive compression rate, we can maximize the informational content throughput of the whole application. In this paper, we propose a novel optimization scheme that enables such a feature for MCL models. Our proposal enables practical implementation of adaptive compressive signal acquisition and inference systems. Experimental results demonstrated that the proposed approach can significantly reduce the amount of computations required during the training phase of remote learning systems but also improve the informational content throughput via adaptive-rate sensing.
翻译:多线压缩学习(MCL)是多维信号的有效信号获取和学习模式。信号压缩水平影响MCL模型的检测或分类性能,高压缩率往往与较低的推断准确性有关。然而,较高的压缩率更适合更广泛的应用,特别是需要低操作带宽和最小能源消耗的应用,例如互联网图案(IoT)应用。许多通信协议为适应性数据传输提供支持,以尽量扩大吞吐量和尽量减少能源消耗。通过开发能够以适应性压缩率运作的压缩感应和学习模型,我们可以最大限度地增加整个应用的信息内容。在本文件中,我们提出了一个新的优化计划,使MCL模型能够具有这样的特征。我们的建议有助于实际实施适应性压缩信号获取和推断系统。实验结果表明,拟议的方法可以大大减少远程学习系统培训阶段所需的计算数量,同时通过适应性率感测改进信息内容的吞吐量。