It doesn’t have a name yet, but it’s almost miraculous. Tags: academic papers, key logging, passwords, privacy, side-channel attacks, Wi-Fiįriday Squid Blogging: Self-Repairing Fabrics Based on Squid TeethĪs shown in the video below, researchers at Pennsylvania State University recently developed a polyelectrolyte liquid solution made of bacteria and yeast that automatically mends clothes. In real-world experiments, WiKey can recognize keystrokes in a continuously typed sentence with an accuracy of 93.5%. WiKey achieves more than 97.5% detection rate for detecting the keystroke and 96.4% recognition accuracy for classifying single keys. We implemented the WiKey system using a TP-Link TL-WR1043ND WiFi router and a Lenovo X200 laptop. When a human subject types on a keyboard, WiKey recognizes the typed keys based on how the CSI values at the WiFi signal receiver end. The sender continuously emits signals and the receiver continuously receives signals. WiKey consists of two Commercial Off-The-Shelf (COTS) WiFi devices, a sender (such as a router) and a receiver (such as a laptop).
In this paper, we propose a WiFi signal based keystroke recognition system called WiKey. The intuition is that while typing a certain key, the hands and fingers of a user move in a unique formation and direction and thus generate a unique pattern in the time-series of Channel State Information (CSI) values, which we call CSI-waveform for that key. In this paper, we show for the first time that WiFi signalsĬan also be exploited to recognize keystrokes. This is interesting research: “ Keystroke Recognition Using WiFi Signals.” Basically, the user’s hand positions as they type distorts the Wi-Fi signal in predictable ways.Ībstract: Keystroke privacy is critical for ensuring the security of computer systems and the privacy of human users as what being typed could be passwords or privacy sensitive information. Keystroke Recognition from Wi-Fi Distortion Tags: academic papers, biometrics, identification, privacy, surveillance, Wi-Fi Experimental results indicate that the identification accuracy is about 88.9% to 94.5% when the candidate user set changes from 6 to 2, showing that the proposed human identification method is effective in domestic environments. We implemented the system in a 6m*5m smart home environment and recruited 9 users for data collection and evaluation. Specifically, a combination of Principal Component Analysis (PCA), Discrete Wavelet Transform (DWT) and Dynamic Time Warping (DTW) techniques is used for CSI waveform-based human identification.
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The influence can be captured by the Channel State Information (CSI) time series of WIFI. It is based on the observation that each person has specific influence patterns to the surrounding WIFI signal while moving indoors, regarding their body shape characteristics and motion patterns. In this paper, we propose a novel approach for human identification, which leverages WIFI signals to enable non-intrusive human identification in domestic environments. While these methods could be very useful under different conditions, they also suffer from certain shortcomings (e.g., user privacy, sensing coverage range). There have been numerous methods proposed for human identification (e.g., face recognition, gait recognition, fingerprint identification, etc.). “ FreeSense:Indoor Human Identification with WiFi Signals“:Ībstract: Human identification plays an important role in human-computer interaction. This one is on identifying people by their body shape. Using Wi-Fi Signals to Identify People by Body ShapeĪnother paper on using Wi-Fi for surveillance.