Publication | Open Access
A deep neural network model for multi-view human activity recognition
22
Citations
48
References
2022
Year
Machine VisionMachine LearningImage AnalysisData SciencePattern RecognitionMultiple CamerasHuman ActivityEngineeringHuman Pose EstimationComputer ScienceVideo UnderstandingVideo TransformerOcclusion ProblemDeep LearningActivity RecognitionVideo InterpretationComputer VisionImage Sequence Analysis
Multiple cameras are used to resolve occlusion problem that often occur in single-view human activity recognition. Based on the success of learning representation with deep neural networks (DNNs), recent works have proposed DNNs models to estimate human activity from multi-view inputs. However, currently available datasets are inadequate in training DNNs model to obtain high accuracy rate. Against such an issue, this study presents a DNNs model, trained by employing transfer learning and shared-weight techniques, to classify human activity from multiple cameras. The model comprised pre-trained convolutional neural networks (CNNs), attention layers, long short-term memory networks with residual learning (LSTMRes), and Softmax layers. The experimental results suggested that the proposed model could achieve a promising performance on challenging MVHAR datasets: IXMAS (97.27%) and i3DPost (96.87%). A competitive recognition rate was also observed in online classification.
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