Dadkhahi Hamid, Marlin Benjamin M
College of Information and Computer Sciences, University of Massachusetts Amhefirst.
KDD. 2017 Aug;2017:1773-1781. doi: 10.1145/3097983.3098169.
In this paper, we present a new approach to learning cascaded classifiers for use in computing environments that involve networks of heterogeneous and resource-constrained, low-power embedded compute and sensing nodes. We present a generalization of the classical linear detection cascade to the case of tree-structured cascades where different branches of the tree execute on different physical compute nodes in the network. Different nodes have access to different features, as well as access to potentially different computation and energy resources. We concentrate on the problem of jointly learning the parameters for all of the classifiers in the cascade given a fixed cascade architecture and a known set of costs required to carry out the computation at each node. To accomplish the objective of joint learning of all detectors, we propose a novel approach to combining classifier outputs during training that better matches the hard cascade setting in which the learned system will be deployed. This work is motivated by research in the area of mobile health where energy efficient real time detectors integrating information from multiple wireless on-body sensors and a smart phone are needed for real-time monitoring and the delivery of just-in-time adaptive interventions. We evaluate our framework on mobile sensor-based human activity recognition and mobile health detector learning problems.
在本文中,我们提出了一种用于学习级联分类器的新方法,该方法适用于涉及异构且资源受限的低功耗嵌入式计算和传感节点网络的计算环境。我们将经典线性检测级联推广到树结构级联的情况,其中树的不同分支在网络中的不同物理计算节点上执行。不同的节点可以访问不同的特征,以及潜在的不同计算和能源资源。我们专注于在给定固定级联架构和每个节点执行计算所需的已知成本集的情况下,联合学习级联中所有分类器参数的问题。为了实现所有检测器的联合学习目标,我们提出了一种在训练期间组合分类器输出的新颖方法,该方法能更好地匹配学习系统将被部署的硬级联设置。这项工作的动机来自移动健康领域的研究,在该领域中,需要集成来自多个无线可穿戴传感器和智能手机信息的节能实时检测器,以进行实时监测和提供即时自适应干预。我们在基于移动传感器的人类活动识别和移动健康检测器学习问题上评估我们的框架。