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3 months ago

Activity recognition using ST-GCN with 3D motion data

{Xin Cao Masaki Shuzo Wataru Kudo Chihiro Ito Eisaku Maeda}

Abstract

For the Nurse Care Activity Recognition Challenge, an activity recognition algorithm was developed by Team TDU-DSML. A spatial-temporal graph convolutional network (ST-GCN) was applied to process 3D motion capture data included in the challenge dataset. Time-series data was divided into 20-second segments with a 10-second overlap. The recognition model with a tree-structure graph was then created. The prediction result was set to one-minute segments on the basis of a majority decision from each segment output. Our model was evaluated by using leave-one-subject-out cross-validation methods. An average accuracy of 57% for all six subjects was achieved.

Benchmarks

BenchmarkMethodologyMetrics
multimodal-activity-recognition-on-nurse-careST-GCN
Accuracy: 64.6%
Train F-measure: 52.9%

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Activity recognition using ST-GCN with 3D motion data | Papers | HyperAI