Localization is one of the most important problems in various fields such as robotics and wireless communications. For instance, Unmanned Aerial Vehicles (UAVs) require the information of the position precisely for an adequate control strategy. This problem is handled very efficiently with integrated GPS units for outdoor applications. However, indoor applications require special treatment due to the unavailability of GPS signals. Another aspect of mobile robots such as UAVs is that there is constant wireless communication between the mobile robot and a computational unit. This communication is mainly done for obtaining telemetry information or computation of control actions directly. The responsible integrated units for this transmission are commercial wireless communication chipsets. These units on the receiver side are responsible for getting rid of the diverse effects of the communication channel with various mathematical techniques. These techniques mainly require the Channel State Information (CSI) of the current channel to compensate the channel itself. After the compensation, the chipset has nothing to do with CSI. However, the locations of both the transmitter and receiver have a direct impact on CSI. Even though CSI contains such rich information about the environment, the accessibility of these data is blocked by the commercial wireless chipsets since they are manufactured to provide only the processed information data bits to the user. However, with the IEEE 802.11n standardization, certain chipsets provide access to CSI. Therefore, CSI data became processible and integrable to localization schemes. In this project, a test environment was constructed for the localization task. Two routers with proper chipsets were assigned as transmitter and receiver. They were operationalized for the CSI data collection. Lastly, these data were processed with various deep learning models.
翻译:本地化是移动机器人和计算单位之间最重要的问题之一,例如机器人和无线通信。例如,无人驾驶航空飞行器(UAVs)要求为适当的控制战略提供位置信息。这个问题与室内应用的综合全球定位系统装置非常高效地处理。然而,室内应用由于没有全球定位系统信号而需要特殊处理。无人驾驶飞行器(UAVs)等移动机器人的另一个方面是移动机器人和计算单位之间经常进行无线通信。这种通信主要是为了获得远程测量信息或直接计算控制行动。这种传输的负责综合单位是商业无线通信芯片。接收器方面的这些单位负责用各种数学技术消除通信频道的各种影响。这些技术主要要求当前频道的频道状态信息(CSI)来补偿频道本身。在补偿后,芯片与CSI没有关系。但是,发射机和接收机的位置对CSI有直接影响。尽管CSI包含关于环境的丰富信息,但这些数据的可获取性能被商业无线通信芯片接收器阻断。这些接收器的功能被商业无线通信芯片组用各种通信芯片。这些设备被商业无线路段接收器用各种通信芯片。这些设备负责清除。这些技术处理的系统是CSI的CSI,由于它们被制造了正常化的C-C-C-xLeralalentalalalalal 数据采集数据采集数据采集过程,而成为了C-I的C-lientalliental化数据采集数据采集到了C-I,而成为了C-I的运行数据采集数据采集数据采集数据采集到了C-I的C-I。C-I的运行数据采集到了C-xxxildalentalentalentalental化为C-I,而成为了C-I的运行程序,因此,而开始为C-I的运行到了C-I的运行到了C-I的运行程序,而开始数据采集到了C-I的系统化数据采集到了C-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I