Keyword search (4,164 papers available)

"recognition" Keyword-tagged Publications:

Title Authors PubMed ID
1 In Shift and In Variance: Assessing the Robustness of HAR Deep Learning Models Against Variability Khaked AA; Oishi N; Roggen D; Lago P; 39860799
ENCS
2 The effects of competition and implicit power motive on men's testosterone, emotion recognition, and aggression Vongas JG; Al Hajj R; 28455183
JMSB
3 Winter's Topography, Law, and the Colonial Legal Imaginary in British Columbia Matthew P Unger 37885918
CONCORDIA
4 Invariant Pattern Recognition with Log-Polar Transform and Dual-Tree Complex Wavelet-Fourier Features Chen G; Krzyzak A; 37112182
ENCS
5 Human Activity Recognition with an HMM-Based Generative Model Manouchehri N; Bouguila N; 36772428
ENCS
6 Disturbance cues function as a background risk cue but not as an associative learning cue in tadpoles Rivera-Hernández IAE; Crane AL; Pollock MS; Ferrari MCO; 35099624
BIOLOGY
7 Entropy-Based Variational Scheme with Component Splitting for the Efficient Learning of Gamma Mixtures Bourouis S; Pawar Y; Bouguila N; 35009726
ENCS
8 Human Activity Recognition: A Comparative Study to Assess the Contribution Level of Accelerometer, ECG, and PPG Signals Afzali Arani MS; Costa DE; Shihab E; 34770303
ENCS
9 Complementary variable- and person-centered approaches to the dimensionality of burnout among fire station workers Sandrin E; Morin AJS; Fernet C; Gillet N; 34314264
CONCORDIA
10 On the Impact of Biceps Muscle Fatigue in Human Activity Recognition. Elshafei M, Costa DE, Shihab E 33557239
ENCS
11 Towards Detecting Biceps Muscle Fatigue in Gym Activity Using Wearables. Elshafei M, Shihab E 33498702
ENCS
12 A Benchmark of Data Stream Classification for Human Activity Recognition on Connected Objects. Khannouz M; Glatard T; 33202905
ENCS
13 A Go/No-go delayed nonmatching-to-sample procedure to measure object-recognition memory in rats. Cole E, Chad M, Moman V, Mumby DG 32533993
PSYCHOLOGY
14 Effects of perirhinal cortex and hippocampal lesions on rats' performance on two object-recognition tasks. Cole E, Ziadé J, Simundic A, Mumby DG 31877339
PSYCHOLOGY
15 A Quantitative Comparison of Overlapping and Non-Overlapping Sliding Windows for Human Activity Recognition Using Inertial Sensors. Dehghani A, Sarbishei O, Glatard T, Shihab E 31752158
ENCS

 

Title:A Benchmark of Data Stream Classification for Human Activity Recognition on Connected Objects.
Authors:Khannouz MGlatard T
Link:https://www.ncbi.nlm.nih.gov/pubmed/33202905
DOI:10.3390/s20226486
Publication:Sensors (Basel, Switzerland)
Keywords:Hoeffding treeMCNNMondrianapplication platformbenchmarkclassificationdata management and analyticsdata streamshuman activity recognitionmemory footprintpowersmart environment
PMID:33202905 Category:Sensors (Basel) Date Added:2020-11-20
Dept Affiliation: ENCS
1 Department of Computer Science and Software Engineering, Concordia University, Montréal, QC H3G 1M8, Canada.

Description:

This paper evaluates data stream classifiers from the perspective of connected devices, focusing on the use case of Human Activity Recognition. We measure both the classification performance and resource consumption (runtime, memory, and power) of five usual stream classification algorithms, implemented in a consistent library, and applied to two real human activity datasets and three synthetic datasets. Regarding classification performance, the results show the overall superiority of the Hoeffding Tree, the Mondrian forest, and the Naïve Bayes classifiers over the Feedforward Neural Network and the Micro Cluster Nearest Neighbor classifiers on four datasets out of six, including the real ones. In addition, the Hoeffding Tree and-to some extent-the Micro Cluster Nearest Neighbor, are the only classifiers that can recover from a concept drift. Overall, the three leading classifiers still perform substantially worse than an offline classifier on the real datasets. Regarding resource consumption, the Hoeffding Tree and the Mondrian forest are the most memory intensive and have the longest runtime; however, no difference in power consumption is found between classifiers. We conclude that stream learning for Human Activity Recognition on connected objects is challenged by two factors which could lead to interesting future work: a high memory consumption and low F1 scores overall.

PMID: 33202905 [PubMed - in process]





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