An FSM based methodology for interleaved and concurrent activity recognition

J. Kavya, M. Geetha
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引用次数: 4

Abstract

Research on human activity recognition is one of the most promising research topic and is attracted attention towards a number of disciplines and application domains. Successful research has so far focused on recognizing sequential human activities. In real life people are performing actions not only in sequential but also in complex (concurrent or interleaved) manner. Recognizing complex activities remains a challenging and active area of research. Due to a high degree of freedom of human activities, it is difficult to have a model which can deal with interleaved and concurrent activities. We propose a method that uses automatically constructed finite state automata, stack and queue data structures for recognizing concurrent and interleaved activities.
基于FSM的交错并发活动识别方法
人体活动识别研究是目前最具发展前景的研究课题之一,受到众多学科和应用领域的关注。迄今为止,成功的研究都集中在识别连续的人类活动上。在现实生活中,人们的行为不仅是连续的,而且是复杂的(并发的或交错的)。识别复杂的活动仍然是一个具有挑战性和活跃的研究领域。由于人类活动的高度自由度,很难有一个模型可以处理交错和并行的活动。我们提出了一种使用自动构造的有限状态自动机、堆栈和队列数据结构来识别并发和交错活动的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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