基于多特征的人群感知不确定目标识别

Bin Liu, Chao Song, Ming Liu, Nianbo Liu
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引用次数: 1

摘要

具有各种传感器和强大功能(计算、存储和通信)的智能手机的发展,激发了一种流行的计算和感知范式,即群体感知。一般来说,在群体感知中,智能手机感知并收集大量智能手机用户的感官数据,以识别不确定的物体。然而,现有的一些群体感知解决方案通常倾向于仅利用一个或几个特征来区分不确定对象。在本文中,由于特征较少的限制,我们提出利用多特征来区分不确定目标进行众感知。为了区分具有多个特征的不确定目标,我们提出了基于KL散度的聚类方法。此外,我们还引入了对称KL散度和Jensen-Shannon KL散度两种突变形式来改进我们的算法。我们用带有传感器的智能手机收集的多个特征的真实数据来评估我们提出的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distinguishing uncertain objects with multiple features for crowdsensing
The development of the smartphones with various sensors, and powerful capabilities (computing, storage, and communication), motivates a popular computing and sensing paradigm, crowdsensing. In general, in crowdsensing, the smart-phones sense and collect the sensory data from a large number of smartphone users, for distinguishing the uncertain objects. However, some existing solutions for crowdsensing usually prefer to utilize only one or few features to distinguish the uncertain objects. In this paper, due to the limitation of less features, we propose to utilize multiple features to distinguish the uncertain objects for crowdsensing. For distinguishing uncertain objects with multiple features, we propose to utilize KL divergence based clustering. Moreover, we introduce two other mutated forms, the symmetry KL divergence and Jensen-Shannon KL divergence, to improve our algorithm. We evaluate our proposed schemes with real data of multiple features, which are collected by the smartphones with the sensors.
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