Machine learning models have become an essential tool in current indoor positioning solutions, given their high capabilities to extract meaningful information from the environment. Convolutional neural networks (CNNs) are one of the most used neural networks (NNs) due to that they are capable of learning complex patterns from the input data. Another model used in indoor positioning solutions is the Extreme Learning Machine (ELM), which provides an acceptable generalization performance as well as a fast speed of learning. In this paper, we offer a lightweight combination of CNN and ELM, which provides a quick and accurate classification of building and floor, suitable for power and resource-constrained devices. As a result, the proposed model is 58\% faster than the benchmark, with a slight improvement in the classification accuracy (by less than 1\%
翻译:机器学习模型已成为目前室内定位解决方案中一个必不可少的工具,因为它们从环境中获取有意义的信息的能力很高。进化神经网络(CNNs)是最常用的神经网络之一,因为它们能够从输入数据中学习复杂的模式。室内定位解决方案中的另一个模型是极端学习机器(ELM),它提供了可接受的一般化性能和快速学习速度。在本文中,我们提供了CNN和ELM的轻量级组合,它提供了建筑和地板的快速和准确分类,适合电源和资源限制装置。因此,拟议的模型比基准速度快58 ⁇,分类准确性稍有提高(不到1 ⁇ )。