Human activity recognition with fine-tuned CNN-LSTM

Author:

Genc Erdal1,Yildirim Mustafa Eren23,Salman Yucel Batu4

Affiliation:

1. Equinor UK Ltd , London , United Kingdom

2. Department of Electronics and Communications Engineering , American University of Malta

3. Department of Electrical and Electronics Engineering , Bahçeşehir University , Turkey

4. Department of Software Engineering , Bahcesehir University , Turkey

Abstract

Abstract Human activity recognition (HAR) by deep learning is a challenging and interesting topic. Although there are robust models, there is also a bunch of parameters and variables, which affect the performance such as the number of layers, pooling type. This study presents a new deep learning architecture that is obtained by fine-tuning of the conventional CNN-LSTM model, namely, CNN (+3)-LSTM. Three changes are made to the conventional model to increase the accuracy. Firstly, kernel size is set to 1×1 to extract more information. Secondly, three convolutional layers are added to the model. Lastly, average pooling is used instead of max-pooling. Performance analysis of the proposed model is conducted on the KTH dataset and implemented on Keras. In addition to the overall accuracy of the proposed model, the contribution of each change is observed individually. Results show that adding layers made the highest contribution followed by kernel size and pooling, respectively. The proposed model is compared with state-of-art and outperformed some of the recent studies with a 94.1% recognition rate.

Publisher

Walter de Gruyter GmbH

Reference31 articles.

1. P. Casale, O. Pujol, and P. Radeva, “Human activity recognition from accelerometer data using a wearable device,” in Proceedings of Iberian Conference on Pattern Recognition and Image Analysis, Spain, 2011, pp. 289-296.

2. N. C. Krishnan, D. Colbry, C. Juillard, and S. Panchanathan, “Real-time human activity recognition using tri-axial accelerometers,” in Proceedings of Sensors, Signals and Information Processing Workshop, Sedona, 2008.

3. A. H. Moeslund and V. Kruger, “A survey of advances in vision-based human motion capture and analysis”, Computer Vision and Image Understanding, vol. 104, no. 2-3, pp. 90-126, Dec. 2006.

4. M. B. Holte, “Vision-Based 2D and 3D Human Activity Recognition,” Ph.D. dissertation, Aalborg University, Aalborg, Denmark, 2012.

5. Kinect Physical Therapy, http://x-tech.am/kinect-physical-therapy.

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