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Statistical Machine Learning vs Deep Learning in Information Fusion: Competition or Collaboration?

机译:信息融合中的统计机器学习与深度学习:竞争还是协作?

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Information fusion is the process of coherently and intelligently combining knowledge extracted from different sensors/modalities, in order to obtain more useful or discriminant information for the purpose of multimedia processing and biometrics, among others. The key to successful information fusion is to intelligently exploit the intrinsic relations between the data of different modalities. Statistical machine learning (SML) has played a major role in developing new information fusion methods, by incorporating prior knowledge and entropy metric, correlation analysis, inherent statistical structures of input data, and nonlinear relations. On the other hand, the recent development of deep learning (DL) draws enormous attention from the machine learning community. DL algorithms possess deep structures, requiring a large amount of data to train the huge number of parameters, an ultra-expensive process. However, the payoff is enormous; unprecedented success in many applications. This paper will first review recent development of both SML and DL in the context of information fusion, then analyze their pros and cons, and compare their performance in a number of application domains. Based on preliminary results, some thoughts will be presented on how SML and DL can work together to bring the study in machine learning to the next level, better serving human needs.
机译:信息融合是将从不同传感器/模式中提取的知识进行连贯和智能结合的过程,以便获得更多有用或有区别的信息,以用于多媒体处理和生物测定等。成功的信息融合的关键是智能地利用不同形式的数据之间的内在联系。统计机器学习(SML)通过合并先验知识和熵度量,相关分析,输入数据的固有统计结构以及非线性关系,在开发新的信息融合方法中发挥了重要作用。另一方面,深度学习(DL)的最新发展引起了机器学习社区的极大关注。 DL算法具有深层结构,需要大量数据来训练大量参数,这是一个非常昂贵的过程。但是,回报是巨大的。在许多应用中取得了空前的成功。本文将首先回顾SML和DL在信息融合方面的最新发展,然后分析它们的优缺点,并比较它们在许多应用领域中的性能。基于初步结果,将提出一些关于SML和DL如何协同工作以将机器学习研究提高到一个新水平,更好地满足人类需求的想法。

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