室内照明环境感知与降维分析

Tushar Routh, Nurani Saoda, Md Fazlay Rabbi Masum Billah, Nabeel Nasir, Brad Campbell
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引用次数: 0

摘要

一种通用的室内光传感器可以提供信息,以建立和监控室内照明安排,使其美观并符合居民提出的要求。然而,从被测参数中识别周围照明环境存在一定的局限性和挑战。迄今为止,分类器被设计为只能识别单个源,即使在多源环境中也是如此。仅基于感测值的分类可能不完美,因为多种类型的源可以共享共同的参数,或者单个源的读数可能随时间波动。分类性能大多在受控环境下进行评估。在这项工作中,我们使用了一个定制的基于蓝牙低功耗(BLE)的光传感器,它可以根据指示感知和发布主要的照明参数。基于感知参数并采用几种基于机器学习(ML)和神经网络(NN)的模型,我们试图识别室内环境中四种不同类型光源的单一和混合存在:白炽灯,LED, CFL和阳光。在丢包场景常见的情况下,板外识别可能会变得具有挑战性。为此,我们研究了具有卓越计算能力的物联网设备如何利用降维技术来最小化分类所需的空中流量。然后,我们在受控环境和真实世界的测试台上用所有这些方法测试分类器。结果表明,我们的最佳模型在受控场景下检测照明环境的准确率高达98.22%,在真实测试平台上检测照明环境的准确率高达83.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensing Indoor Lighting Environments and Analysing Dimension Reduction for Identification
A generalized indoor light sensor can provide information to build and monitor indoor lighting arrangement that is aesthetically pleasing and conforming to the requirements set forth by the inhabitants. However, the identification of the surrounding lighting environment from the sensed parameters has some limitations and challenges. Till-to-date, classifiers are designed to identify only a single source, even in a multi-source environment. Classification based only on sensed values can be imperfect, as multi-type sources can share common parameters, or readings from a single source can fluctuate over time. The classification performances are mostly evaluated in controlled environments. In this work, we use a customised Bluetooth Low Energy (BLE) based light sensor that can sense and advertise major lighting parameters as instructed. Based on sensed parameters and adopting several Machine Learning (ML) and Neural Network (NN) based models off-board, we try to identify the singular and mixed presence of the four dissimilar types of sources: Incandescent, LED, CFL, and Sunlight in indoor surroundings. Off-board identification can get challenging where packet loss scenario is common. For that, we study how IoT devices with superior computational capability can utilise dimensional reduction techniques to minimize the required on-air traffic for classification. We then test classifiers with all those approaches both in controlled environments and real-world testbeds. The result shows that our best model can detect lighting environments with an accuracy of up to 98.22% in the controlled scenario and 83.33% in real-world testbeds.
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