2020
DOI: 10.1109/tnse.2018.2871165
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Deep Convolutional Neural Networks for Indoor Localization with CSI Images

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Cited by 184 publications
(128 citation statements)
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“…Several recent studies tackling indoor positioning have employed such machine learning models: a four layer deep neural network, combined with a denoising autoencoder and a hidden Markov model is employed in [51] for indoor and outdoor localization; a recurrent neural network which uses WiFi signals for an indoor positioning system is presented in [21]; another recurrent neural network, more specifically a long short-term memory network is used by Urano et al [43] with BLE signal strength data for indoor localization; Mittal et al [29] propose a convolutional neural networks based framework for indoor localization, in which the networks use images created from WiFi signatures. Another convolutional deep neural network starting from phase data of channel state information, which is transformed into images based on estimated angles of arrival is presented in [46]. In our model, the neural network input is a triplet that contains the three RSSI values recorded by the intelligent luminaires, while the output is the estimated location, represented as a coordinate pair.…”
Section: Neural Network Based Techniquementioning
confidence: 99%
“…Several recent studies tackling indoor positioning have employed such machine learning models: a four layer deep neural network, combined with a denoising autoencoder and a hidden Markov model is employed in [51] for indoor and outdoor localization; a recurrent neural network which uses WiFi signals for an indoor positioning system is presented in [21]; another recurrent neural network, more specifically a long short-term memory network is used by Urano et al [43] with BLE signal strength data for indoor localization; Mittal et al [29] propose a convolutional neural networks based framework for indoor localization, in which the networks use images created from WiFi signatures. Another convolutional deep neural network starting from phase data of channel state information, which is transformed into images based on estimated angles of arrival is presented in [46]. In our model, the neural network input is a triplet that contains the three RSSI values recorded by the intelligent luminaires, while the output is the estimated location, represented as a coordinate pair.…”
Section: Neural Network Based Techniquementioning
confidence: 99%
“…A segmented signal frame was used to determine the pedestrian speed for CNN and RNN, and the walking distance was estimated by calculating the speed and moving time. Wang et al [21] extracted channel state information (CSI) data from WiFi as the input for deep CNN to predict the position of mobile devices. Mittal et al [22] also used WiFi data.…”
Section: Convolutional Neural Networkmentioning
confidence: 99%
“…For indoor localization problems, CiFi [33,36] system leverages generated images with estimated AOA values with commodity 5GHz WiFi as the input of CNN for indoor localization, which can be trained by backpropagation (BP) algorithm. This system demonstrates that the performance of the localization has outperformed existing schemes, like FIFS and Horus.…”
Section: Convolutional Neural Networkmentioning
confidence: 99%