Our paper “Multi-Year Long-Term Person Re-Identification Using Gait and HAR Features” has been accepted for publication in Pattern Recognition. Proud to publish this work with my colleagues at ULPGC 👣🧠📈 #GaitRecognition #HumanActivity #ULPGC #PatternRecognition
October 18, 2025 at 6:52 PM
Our paper “Multi-Year Long-Term Person Re-Identification Using Gait and HAR Features” has been accepted for publication in Pattern Recognition. Proud to publish this work with my colleagues at ULPGC 👣🧠📈 #GaitRecognition #HumanActivity #ULPGC #PatternRecognition
How Governments Spy On Protesters — And How To Avoid It
#stingray #NoKings #Ice #Protests #Trump #LicensePlateReaders #Drones #GaitRecognition #AI #EmotionalDetection #Biometrics #PoliceState #Fascism #FaradayBag #SocialMedia #Encryption #Masks
youtu.be/lL34WpoETds?...
#stingray #NoKings #Ice #Protests #Trump #LicensePlateReaders #Drones #GaitRecognition #AI #EmotionalDetection #Biometrics #PoliceState #Fascism #FaradayBag #SocialMedia #Encryption #Masks
youtu.be/lL34WpoETds?...
How Governments Spy On Protestors—And How To Avoid It | Incognito Mode | WIRED
YouTube video by WIRED
youtu.be
June 11, 2025 at 9:21 PM
How Governments Spy On Protesters — And How To Avoid It
#stingray #NoKings #Ice #Protests #Trump #LicensePlateReaders #Drones #GaitRecognition #AI #EmotionalDetection #Biometrics #PoliceState #Fascism #FaradayBag #SocialMedia #Encryption #Masks
youtu.be/lL34WpoETds?...
#stingray #NoKings #Ice #Protests #Trump #LicensePlateReaders #Drones #GaitRecognition #AI #EmotionalDetection #Biometrics #PoliceState #Fascism #FaradayBag #SocialMedia #Encryption #Masks
youtu.be/lL34WpoETds?...
@wired.com / WIRED: "How Governments Spy On Protestors—And How To Avoid It | Incognito Mode | WIRED" / #Surveillance #FacialRecognition #SocialMedia #ImageRecognition #IMSIcatchers #Geofencing #DataBrokers #LicensePlateReaders #Drones #GaitRecognition
www.youtube.com/watch?v=lL34...
www.youtube.com/watch?v=lL34...
How Governments Spy On Protestors—And How To Avoid It | Incognito Mode | WIRED
YouTube video by WIRED
www.youtube.com
September 13, 2025 at 5:44 AM
@wired.com / WIRED: "How Governments Spy On Protestors—And How To Avoid It | Incognito Mode | WIRED" / #Surveillance #FacialRecognition #SocialMedia #ImageRecognition #IMSIcatchers #Geofencing #DataBrokers #LicensePlateReaders #Drones #GaitRecognition
www.youtube.com/watch?v=lL34...
www.youtube.com/watch?v=lL34...
Episode 0148 - Gait and Body Biometrics as Court Evidence in the EU
YouTube video by TheSocialCredit
youtu.be
September 20, 2025 at 2:55 PM
JMIR Formative Res: Designing a Gait Recognition Algorithm for Older Adults Using Mobility Aids: Prospective Cohort Study #GaitRecognition #MobilityAids #OlderAdults #WearableTechnology #HealthTech
Designing a Gait Recognition Algorithm for Older Adults Using Mobility Aids: Prospective Cohort Study
Background: Maintaining mobility is important for older adults to retain independence and reduce fall risk. Wearable technology like fitness trackers and smartwatches can track physical activity. Unfortunately, gait recognition algorithms are often calibrated using younger adults and are not accurate for older adults, especially when using mobility aids. Objective: Our goal was to develop a gait recognition algorithm capable of detecting the walking patterns of older adults that is robust to using mobility aids. Wrist-worn wearable devices were used to maximize the ubiquity of the approach. Methods: We collected walking and other daily activity data on 9 independent older adults to develop a gait recognition algorithm. Four participants used mobility aids (2 cane users, 2 rollator users). We calibrated a heuristic-based “one-size-fits-most” algorithm leveraging the harmonic patterns associated with walking to recognize the walking patterns of our cohort. This algorithm is computationally lightweight and relies only on accelerometer data. We used hyperparameter tuning using a Parzen tree estimator to find the optimal parameters in a leave-one-subject-out fashion. Results: The calibration process was required for this algorithm to detect walking. The signal amplitude threshold lowered from 0.3g to 0.2g to detect the more subtle walking patterns of older adults. The walking frequency range widened from [1.4Hz, 2.3Hz] to [0.8Hz, 2.6Hz], showing that older adults walk more slowly. The ratio for superharmonics increased from 1.4 to 38. Analyzing the false positive rate for the other daily activity classes implies that these superharmonics are artifacts of back-and-forth arm motions that characterize walking in our collected data. Additionally, we report the performance metrics of sensitivity, specificity, and F1-score to evaluate our algorithm. Sensitivity increased tenfold from 0.08 to 0.80. F1-score increased from 0.12 to 0.68. Specificity decreased from 0.99 to 0.77 due to false positives for the activities of brushing teeth and washing hands. Conclusions: This experiment successfully recognized the walking patterns of older adults with or without mobility aids. The performance metrics show that this algorithm has promise for being used to monitor physical activity. This approach is computationally lightweight and explainable. Our calibration approach can be adopted to tune to new populations and has a low barrier to entry due to the sole reliance on accelerometer data which is a standard sensor in wearable devices. The most noteworthy parameter adjustment is the ratio for superharmonics. Low values cause the algorithm not to detect walking in our older adult data. We validated the algorithm on two rollator users. A larger study with more participants using mobility aids is necessary to conduct a deeper analysis on what parameters work best for this population. Future work includes validating the algorithm’s ability to estimate step counts and measure physical activity in real-world settings.
dlvr.it
November 10, 2025 at 8:56 PM
JMIR Formative Res: Designing a Gait Recognition Algorithm for Older Adults Using Mobility Aids: Prospective Cohort Study #GaitRecognition #MobilityAids #OlderAdults #WearableTechnology #HealthTech
#bbcpm covering Prof Mark Nixon's #gaitrecognition research from U of Southampton: http://www.southampton.ac.uk/research/southamptonstories/medhealthlife/walk_this_way.html #security #privacy
404 | Page not found | University of Southampton
www.southampton.ac.uk
November 23, 2024 at 12:16 PM
#bbcpm covering Prof Mark Nixon's #gaitrecognition research from U of Southampton: http://www.southampton.ac.uk/research/southamptonstories/medhealthlife/walk_this_way.html #security #privacy