Industrial Human Activity Prediction and Detection Using Sequential Memory Networks

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dc.identifier.uri https://www.repo.uni-hannover.de/handle/123456789/12242
dc.identifier.uri https://doi.org/10.15488/12144
dc.contributor.author Belay Tuli, Tadele
dc.contributor.author Patel, Valay Mukesh
dc.contributor.author Manns, Martin
dc.contributor.editor Herberger, David
dc.contributor.editor Hübner, Marco
dc.date.accessioned 2022-06-02T11:44:47Z
dc.date.issued 2022
dc.identifier.citation Belay Tuli, T.; Patel, V.M.; Manns, M.: Industrial Human Activity Prediction and Detection Using Sequential Memory Networks. In: Herberger, D.; Hübner, M. (Eds.): Proceedings of the Conference on Production Systems and Logistics: CPSL 2022. Hannover : publish-Ing., 2022, S. 62-72. DOI: https://doi.org/10.15488/12144
dc.identifier.citation Belay Tuli, T.; Patel, V.M.; Manns, M.: Industrial Human Activity Prediction and Detection Using Sequential Memory Networks. In: Herberger, D.; Hübner, M. (Eds.): Proceedings of the Conference on Production Systems and Logistics: CPSL 2022. Hannover : publish-Ing., 2022, S. 62-72. DOI: https://doi.org/10.15488/12144
dc.description.abstract Prediction of human activity and detection of subsequent actions is crucial for improving the interaction between humans and robots during collaborative operations. Deep-learning techniques are being applied to recognize human activities, including industrial applications. However, the lack of sufficient dataset in the industrial domain and complexities of some industrial activities such as screw driving, assembling small parts, and others affect the model development and testing of human activities. The InHard dataset (Industrial Human Activity Recognition Dataset) was recently published to facilitate industrial human activity recognition for better human-robot collaboration, which still lacks extended evaluation. We propose an activity recognition method using a combined convolutional neural network (CNN) and long short-term memory (LSTM) techniques to evaluate the InHard dataset and compare it with a new dataset captured in a lab environment. This method improves the success rate of activity recognition by processing temporal and spatial information. Accordingly, the accuracy of the dataset is tested using labeled lists of activities from IMU and video data. A model is trained and tested for nine low-level activity classes with approximately 400 samples per class. The test result shows 88% accuracy for IMU-based skeleton data, 77% for RGB spatial video, and 63% for RGB video-based skeleton. The result has been verified using a previously published region-based activity recognition. The proposed approach can be extended to push the cognition capability of robots in human-centric workplaces. eng
dc.language.iso eng
dc.publisher Hannover : publish-Ing.
dc.relation.ispartof Proceedings of the Conference on Production Systems and Logistics: CPSL 2022
dc.relation.ispartof https://doi.org/10.15488/12314
dc.rights CC BY 3.0 DE
dc.rights.uri https://creativecommons.org/licenses/by/3.0/de/
dc.subject human robot collaboration eng
dc.subject human activity recognition eng
dc.subject Deep Learning eng
dc.subject Manual assembly eng
dc.subject InHard dataset eng
dc.subject human motion capturing eng
dc.subject Konferenzschrift ger
dc.subject.ddc 620 | Ingenieurwissenschaften und Maschinenbau
dc.title Industrial Human Activity Prediction and Detection Using Sequential Memory Networks eng
dc.type BookPart
dc.type Text
dc.relation.essn 2701-6277
dc.bibliographicCitation.firstPage 62
dc.bibliographicCitation.lastPage 72
dc.description.version publishedVersion
tib.accessRights frei zug�nglich


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