Aided target recognition (AiTR), the problem of classifying objects from sensor data, is an important problem with applications across industry and defense. While classification algorithms continue to improve, they often require more training data than is available or they do not transfer well to settings not represented in the training set. These problems are mitigated by transfer learning (TL), where knowledge gained in a well-understood source domain is transferred to a target domain of interest. In this context, the target domain could represents a poorly-labeled dataset, a different sensor, or an altogether new set of classes to identify. While TL for classification has been an active area of machine learning (ML) research for decades, transfer learning within a deep learning framework remains a relatively new area of research. Although deep learning (DL) provides exceptional modeling flexibility and accuracy on recent real world problems, open questions remain regarding how much transfer benefit is gained by using DL versus other ML architectures. Our goal is to address this shortcoming by comparing transfer learning within a DL framework to other ML approaches across transfer tasks and datasets. Our main contributions are: 1) an empirical analysis of DL and ML algorithms on several transfer tasks and domains including gene expressions and satellite imagery, and 2) a discussion of the limitations and assumptions of TL for aided target recognition -- both for DL and ML in general. We close with a discussion of future directions for DL transfer.
翻译:辅助目标识别(AiTR)是从传感器数据中对物体进行分类的问题,是整个行业和国防应用的一个重要问题。分类算法虽然继续改进,但往往需要比现有培训数据更多的培训数据,或者没有很好地向培训组没有代表的环境转移。这些问题通过转移学习(TL)得到缓解,因为通过转移学习(TL),在一个非常清楚的来源领域获得的知识被转移到一个感兴趣的目标领域。在这方面,目标领域可能是一个标签不高的数据集、不同的传感器或全新班级有待识别。虽然分类算法是机器学习(ML)研究的一个积极领域,但几十年来,在深层次学习框架内转移学习仍是一个相对较新的研究领域。虽然深层次的学习(DL)为最近现实世界问题提供了特殊的模型灵活性和准确性模型,但对于使用DL与其他ML结构获得多大的转移好处,我们的目标是通过将DL框架内的转移学习与其他ML方法进行比较,解决这一缺陷。我们的主要贡献是:1)在对DL和ML系统定义进行经验分析,对D领域和ML系统分析,包括对ML系统分析,以及ML系统分析,包括对DL的近域域和ML分析,以及ML分析。