Abstract

Human activity recognition (HAR) is the study of the identification of specific human movement and action based on images, accelerometer data and inertia measurement unit (IMU) sensors. In the sensor based HAR application, most of the researchers used many IMU sensors to get an accurate HAR classification. The use of many IMU sensors not only limits the deployment phase but also increase the difficulty and discomfort for users. As reported in the literature, the original model used 19 sensor data consisting of accelerometers and IMU sensors. The imbalanced class distribution is another challenge to the recognition of human activity in real-life. This is a real-life scenario, and the classifier may predict some of the imbalanced classes with very high accuracy. When a model is trained using an imbalanced dataset, it can degrade model’s performance. In this paper, two approaches, namely resampling and multiclass focal loss, were used to address the imbalanced dataset. The resampling method was used to reconstruct the imbalanced class distribution of the IMU sensor dataset prior to model development and learning using the cross-entropy loss function. A deep ConvLSTM network with a minimal number of IMU sensor data was used to develop the upper-body HAR model. On the other hand, the multiclass focal loss function was used in the HAR model and classified minority classes without the need to resample the imbalanced dataset. Based on the experiments results, the developed HAR model using a cross-entropy loss function and reconstructed dataset achieved a good performance of 0.91 in the model accuracy and F1-score. The HAR model with a multiclass focal loss function and imbalanced dataset has a slightly lower model accuracy and F1-score in both 1% difference from the resampling method. In conclusion, the upper body HAR model using a minimal number of IMU sensors and proper handling of imbalanced class distribution by the resampling method is useful for the assessment of home-based rehabilitation involving activities of daily living.

Highlights

  • The upper body human activity activity recognition recognition (HAR) model using a minimal number of inertia measurement unit (IMU) sensors and proper handling of imbalanced class distribution by the resampling method is useful for the assessment of home-based rehabilitation involving activities of daily living

  • HAR can help to discover a deep understanding in various contexts, such as kinematics, human–computer interaction and health surveillance

  • [1], human activity-based activity-based recomrecom- used to evaluate the performance of the HAR

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Summary

Introduction

A wide variety of applications are implemented centering on HAR, for instance, rehabilitation activities [1], human activity-based recommendation systems [2], gait analysis [3] and kinematics analysis [4,5,6]. For video-based HAR, the human motion is recorded using a video camera and the video is analyzed to perform activity classification later. As for sensor-based HAR, sensors such as accelerometers, gyroscopes and depth sensors are used to collect data from the agent. The sensor data collected are analyzed on a computing platform to discover the similarities and differences between each activity prior to classification. Due to the recent advances in the Internet of Things (IoT) and sensors, such as inertia measurement unit (IMU) sensors, a large amount of personalized data can be collected and analyzed for HAR

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