Human-machine interaction has been around for several decades now, with new applications emerging every day. One of the major goals that remain to be achieved is designing an interaction similar to how a human interacts with another human. Therefore, there is a need to develop interactive systems that could replicate a more realistic and easier human-machine interaction. On the other hand, developers and researchers need to be aware of state-of-the-art methodologies being used to achieve this goal. We present this survey to provide researchers with state-of-the-art data fusion technologies implemented using multiple inputs to accomplish a task in the robotic application domain. Moreover, the input data modalities are broadly classified into uni-modal and multi-modal systems and their application in myriad industries, including the health care industry, which contributes to the medical industry's future development. It will help the professionals to examine patients using different modalities. The multi-modal systems are differentiated by a combination of inputs used as a single input, e.g., gestures, voice, sensor, and haptic feedback. All these inputs may or may not be fused, which provides another classification of multi-modal systems. The survey concludes with a summary of technologies in use for multi-modal systems.
翻译:数十年来,人类机器互动一直存在,每天都在出现新的应用; 有待实现的主要目标之一是设计与人类如何与另一人互动类似的互动; 因此,需要开发互动系统,复制更现实和更容易的人体机器互动; 另一方面, 开发者和研究人员需要了解用于实现这一目标的最新方法; 我们提出这项调查, 向研究人员提供使用多种投入完成机器人应用领域任务的最新数据融合技术; 此外, 投入数据模式被广泛分类为单式和多式系统及其在多种行业的应用, 包括保健行业, 有助于医疗行业的未来发展; 这将有助于专业人员使用不同模式检查病人; 多式系统由作为单一投入(如手势、语音、感应和机能反馈)使用的投入组合而区分。 所有这些投入都可能或可能不会合并, 提供多式系统的另一个分类。 调查结论是, 将多式技术用于多式系统。