Channel State Information from Pure Communication to Sense and Track Human Motion: A Survey
Abstract
:1. Introduction
- We present a comprehensive survey on the new emerging sensing technology called a device-free CSI-based sensing mechanism.
- We address the current advances in device-free CSI-based sensing techniques, summarize previous studies, highlight possible applications, and show achieved results.
- We highlight current limitations and challenges that still need further investigation to enhance device-free CSI-based sensing mechanism.
2. Previous Wi-Fi-Based Sensing Mechanisms
2.1. Received Signal Strength Indicator (RSSI)
2.1.1. RSSI-Based Localization and Motion Detection
2.1.2. RSSI-Based Macro-Activity Recognition
2.1.3. RSSI-Based Micro-Activity Recognition
2.2. Wi-Fi Radar
3. Channel State Information (CSI)
3.1. CSI-Based Localization and Motion Detection
3.2. CSI-Based Macro-Activity Recognition
3.3. CSI-Based Micro-Activity Recognition
4. CSI Methodology
4.1. Preprocessing
4.2. Feature Extraction
4.3. Classification
4.4. Test Scenario
5. Limitations and Challenges
- Tracking two or more objects in the test area. Regardless the recent advancement of CSI-based sensing technology, monitoring two or more objects simultaneously is still a crucial challenge. In [149], the authors presented the first study to address gesture tracking for multiple users. They tested simultaneously performed gestures and studied their impact on wireless signals. Tracking signals for random motions and unfixed orientations is a challenging task and needs to be investigated in literature. Additionally, Ryoo et al. [150] presented MultiTrack, a device-free system that can track multiple users activities. However, this system requires each user to perform activities independently to build the signal profile. Therefore, serious efforts are needed to develop technologies in wireless signal processing, MIMO technology, and wireless sensing techniques to cope with these challenges.
- Object interference. Wireless signals are very sensitive to any movement in the test area. Due to the random motion of interfering objects in the test environment, if an object (i.e., humans, pets, etc.) moves in the perceived place, the received signals in the detection part of the Wi-Fi-based sensing system will fluctuate, resulting in difficult detection of human postures, movement, and activity.
- Unconstrained mobility. From previous studies, in the Wi-Fi sensing mechanism, the motion of tested objects is constrained, since wireless signals fluctuated according to object motion in the test area. Therefore, to track an object motion such as a human, the human must move in constrained directions and locations. Hence, building an unconstrained mobility based system may require a deep investigation of wireless signal processing. Additionally, it may require using body sensors and combined sensors with Wi-Fi signals.
- CSI universality. As described earlier, CSI outperforms RSSI in sensing human motion accuracy, but RSSI outperforms CSI in its availability in almost all known WiFi devices. As known, CSI can be extracted only from specific NICs, such as IWL 5300 NICs. There is another CSI-Tool called Atheros CSI-Tool [151] that has been utilized in different CSI-based sensing applications, including localization [152], macro-activity recognition [134], location-independent activity recognition [153], occupancy counting [154], driver activity recognition [155], and gesture recognition [156]. However, Atheros CSI-Tool is also implemented in restricted NICs and operating systems. Thus, RSSI can be applied in many devices, such as smartphones, tablets, or other Wi-Fi devices. This challenge requires great developments in wireless network cards. Recently, Schulz et al. [157] presented a CSI extracted method that can be implemented in smartphones. This method can be used in the future to track human motion based on CSI using smartphones.
- Extracted both CSI phase and amplitude information. Most of the CSI-based sensing methods are used to leverage CSI amplitude information. Just a few previous studies used CSI phase information because the Intel 5300 NICs provided randomly distributed phase information that are always unstable. Therefore, exploiting full phase information might result in improvement of the CSI sensing mechanism to detect more complicated activities.
- Environment changes. Both CSI and RSSI characteristics are not the same for different environments and different people. In indoor environments, wireless signals propagate through multiple paths, such as furniture, floors, and roofs. Therefore, the results of testing a WiFi-based sensing system in an environment may differ in another environment, and, in each new environment, the system classifier needs to be trained again. Moreover, in the presence of a human in the indoor environment, the signal path will experience more fluctuations. Accordingly, different human bodies will cause different variations in the received signals at the receiver. To build a robust Wi-Fi sensing system, environment changes, and different human user bodies and shapes should be considered carefully.
- Hybrid sensing methods. As already discussed in previous sections, different techniques have different limitations; body sensors attached to the user’s body may be used to solve some limitations of current Wi-Fi sensing systems. Therefore, combining body sensors or smartphones with device-free Wi-Fi-based methods into hybrid sensing technologies needs to be addressed in future work. The first simple attempt to combine CSI and wearable devices was presented in [158]. Moreover, CSI can play an important role in the IoT; therefore, hybrid methods to apply CSI in multimedia communications and IoT applications [159,160,161,162] can be addressed. Furthermore, Wireless Sensor Network (WSN) schemes [163,164,165] can be studied.
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Literature | Device | Drawbacks |
---|---|---|
[5,6] | Camera | Requires good light conditions, and cannot go through a wall. |
[7,8] | Acoustic sensors | Require carrying or installing acoustic sensors. |
[9,10] | Accelerometer sensors | Require a human to carry devices supplied with accelerometers. |
[11,12] | Wearable sensors | Require a human to wear body sensors. |
[13,14] | Environment installed sensors | Require heavy installation. |
[15,16] | Smartphone | Requires a human to carry a smartphone. |
Metric | RSSI | CSI |
---|---|---|
Network layer | MAC layer | Physical layer |
Time resolution | Packet size | Multipath signal cluster scale |
Frequency resolution | No | Subcarrier scale |
Temporal stability | Low | High |
Measurement band | RF band | Base band |
Granularity | Coarse-grained (per packet) | Fine-grained (per subcarrier) |
Universality | Almost all Wi-Fi devices | Some Wi-Fi devices |
Literature | Type of Classified Motion | Classifier | Performance |
---|---|---|---|
FIFS [48] | Human localization | Probability model | Achieves a mean error lower than 1 m |
CSI-MIMO [50] | Human localization | Deterministic kNN and the probabilistic Bayes rule | Achieves an accuracy of 0.95 m |
PADS [63] | Human motion | SVM | Achieves a true positive rate of 94% |
E-eyes [68] | In-place activity: empty, cooking, eating, washing dishes, studying, brushing, bathing. | Earth mover’s distance (EMD) and Multi-Dimensional Dynamic Time Warping (MD-DTW) | Achieves 96% average true positive rate; |
CRAM [71] | Walking, running, sitting down, falling, opening refrigerator, boxing, brushing teeth, pushing one hand, and empty | Model activities with Hidden Markov Model (HMM), and using highest likelihood to identify the activity | Achieves an accuracy of 96% |
WIBECAM [70] | Empty, walking, standing, sitting | Linear discriminant analysis | Achieves accuracies from 0.73 to 1 in different environments |
Wei et al. [69] | Walking, standing, lying, and sitting | Sparse Representative Classifier (SRC) | Achieves 90% of accuracy in case of Window size = 10; |
EI [130] | Wiping the white-board, walking, Moving a suitcase, rotating the chair, sitting, standing up and sitting down | Convolutional Neural Network (CNN) | Achieves an accuracy of 0.75 with balance constraint and 0.6 without balance constraint |
Wu et al. [132] | Walking, sitting down, standing up, falling, hand swing, and boxing | BP neural network | Achieves an accuracy rate of 94.46% |
Li et al. [133] | Bend, and hand clap, walk, phone call, sit down and squat | SVM | Achieves a mean true positive of 98.5%. |
WiFall [72] | Fall detection | SVM | 90% |
RT-Fall [75] | Fall detection | SVM | Achieves an accuracy of 100% |
Li et al. [77] | Sit down, lie, walk, squat down, stand up, crawl, and fall | RF | Achieves a detection accuracy of 95% in LOS, and 91% in NLOS |
WiG [79] | 4 hand motions (left, right, up, down) | SVM | Achives an accuracy of 93% |
WiCatch [138] | Open the window, boxing, open the fridge, push, pull, slide, leftward, rightward, and wave hand; | SVM | Achieves an accuracy of 96% |
WIHEAR [83] | Lip motion for Several world syllabus | DTW | Achieves an accuracy of 91% for one individual speaking 6 words; and 74% for 3 people speaking simultaneously. |
WiKey [82] | 37 Keystrokes (10 digits, one space bar and 26 letters of the alphabets)) | kNN classifier | Achieves keystrokes detection rateof 97.5% and 96.4% of a single key accuracy rate. |
WiFind [147] | Detect driver fatigue by tracking human body breath and motion. | SVM | Achieves an accuracy of 89.6% for single driver; |
Sleepy [145] | Sleep monitoring (tracing human motion during sleep) | Probability model | Achieves 95.65% detection accuracy |
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Al-qaness, M.A.A.; Abd Elaziz, M.; Kim, S.; Ewees, A.A.; Abbasi, A.A.; Alhaj, Y.A.; Hawbani, A. Channel State Information from Pure Communication to Sense and Track Human Motion: A Survey. Sensors 2019, 19, 3329. https://doi.org/10.3390/s19153329
Al-qaness MAA, Abd Elaziz M, Kim S, Ewees AA, Abbasi AA, Alhaj YA, Hawbani A. Channel State Information from Pure Communication to Sense and Track Human Motion: A Survey. Sensors. 2019; 19(15):3329. https://doi.org/10.3390/s19153329
Chicago/Turabian StyleAl-qaness, Mohammed A. A., Mohamed Abd Elaziz, Sunghwan Kim, Ahmed A. Ewees, Aaqif Afzaal Abbasi, Yousif A. Alhaj, and Ammar Hawbani. 2019. "Channel State Information from Pure Communication to Sense and Track Human Motion: A Survey" Sensors 19, no. 15: 3329. https://doi.org/10.3390/s19153329
APA StyleAl-qaness, M. A. A., Abd Elaziz, M., Kim, S., Ewees, A. A., Abbasi, A. A., Alhaj, Y. A., & Hawbani, A. (2019). Channel State Information from Pure Communication to Sense and Track Human Motion: A Survey. Sensors, 19(15), 3329. https://doi.org/10.3390/s19153329