Enabling Body-Centric Computing Applications with LED-to-Camera Communication

Omer Dalgic, D. Puccinelli, Marco Zúñiga
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引用次数: 2

Abstract

Advances in Visible Light Communication are enabling novel Internet of Things applications. Going forward, we expect that LED-to-Camera links will enable a wide range of body-centric computing applications. Up until now, most LED-to-Camera studies have been following a deploy-and-test approach instead of a principled methodology. This ad-hoc design raises up two problems. First, we cannot compare fairly the various methods proposed in the literature because they use different types of LEDs and cameras. Second, and perhaps more importantly, we cannot identify the fundamental opportunities and limits of these novel links. To overcome these challenges, we propose a simple analytical model that estimates the range and data rate of LED-to-camera links prior to deployment. The model is built from first principles and requires only a limited set of parameters. To validate the accuracy of our model, we consider the two main transmission modes used in the literature: binary transmission and communication based on the rolling shutter effect. Our experimental evaluation confirms the predictions of the analytical model.
通过led到摄像头的通信实现以身体为中心的计算应用
可见光通信的进步使物联网的新应用成为可能。展望未来,我们预计led到摄像头的连接将实现广泛的以身体为中心的计算应用。到目前为止,大多数led到相机的研究都遵循部署和测试的方法,而不是原则性的方法。这种特别的设计提出了两个问题。首先,我们不能公平地比较文献中提出的各种方法,因为它们使用不同类型的led和相机。其次,也许更重要的是,我们无法确定这些新联系的基本机会和限制。为了克服这些挑战,我们提出了一个简单的分析模型,在部署之前估计led到摄像机链路的范围和数据速率。该模型是根据第一性原理建立的,只需要一组有限的参数。为了验证我们模型的准确性,我们考虑了文献中使用的两种主要传输模式:二进制传输和基于滚动快门效应的通信。我们的实验评估证实了分析模型的预测。
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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