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A study on outdoor localization method based on deep learning using model-based received power estimation data of low power wireless tag

机译:基于深度学习的低功耗无线标签基于模型的接收功率估计数据的室外定位方法研究

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We are developing a method to acquire position information of a cow outdoors using Received Signal Strength Indicator (RSSI) of Bluetooth Low Energy (BLE). As existing research, there is a localization method using fingerprint database as learning data in deep learning. However, that method has the problem that it costs to create a database by measurement in a vast outdoor environment. Therefore, we considered to build a part of the fingerprint database using virtual space modeling received power measurement environment in a pasture. Experimental results showed that an average distance error to GPS data is about 6 m by training DNN using the database and additionally training DNN using actual GPS data.
机译:我们正在开发一种使用蓝牙低功耗(BLE)的接收信号强度指示器(RSSI)来获取户外母牛的位置信息的方法。作为现有研究,存在一种使用指纹数据库作为深度学习中的学习数据的定位方法。但是,该方法存在以下问题:在广阔的室外环境中通过测量来创建数据库需要花费很多。因此,我们考虑在牧场中使用虚拟空间建模接收功率测量环境来构建指纹数据库的一部分。实验结果表明,通过使用数据库训练DNN并使用实际GPS数据训练DNN,到GPS数据的平均距离误差约为6 m。

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