协作学习环境中上下文敏感的人类活动分类

A. Jacoby, M. Pattichis, Sylvia Celedón-Pattichis, Carlos A. LópezLeiva
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引用次数: 9

摘要

由于强烈需要消除结构噪声,大量可能的活动以及视频采集中的强烈变化,人类活动分类仍然具有挑战性。本文探讨了协作学习环境下人类活动分类的研究。本文探讨了基于颜色的对象检测与对象交互上下文化相结合的使用,以隔离特定于每个人类活动的运动向量。基本方法是为每个活动使用单独的分类器。在这里,我们考虑原始视频中打字、写作和谈话活动的检测。该方法使用了43个未裁剪的视频片段进行测试,其中620帧用于书写,1050帧用于打字,1755帧用于说话。使用简单的KNN分类器,该方法的写作准确率为72.6%,打字准确率为71%,说话准确率为84.6%。使用深度神经网络,分类准确率提高到92.5%(写作),82.5%(打字)和99.7%(谈话)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-Sensitive Human Activity Classification in Collaborative Learning Environments
Human activity classification remains challenging due to the strong need to eliminate structural noise, the multitude of possible activities, and the strong variations in video acquisition. The current paper explores the study of human activity classification in a collaborative learning environment.This paper explores the use of color based object detection in conjunction with contextualization of object interaction to isolate motion vectors specific to each human activity. The basic approach is to make use of separate classifiers for each activity. Here, we consider the detection of typing, writing, and talking activities in raw videos.The method was tested using 43 uncropped video clips with 620 video frames for writing, 1050 for typing, and 1755 frames for talking. Using simple KNN classifiers, the method gave accuracies of 72.6% for writing, 71% for typing and 84.6% for talking. Classification accuracy improved to 92.5% (writing), 82.5% (typing) and 99.7% (talking) with the use of Deep Neural Networks.
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