This project aims to evaluate the deep neural network architecture Deep-ConvLSTM to classify locomotive human activities using data from a single accelerometer. The evaluation involves comparisons to a simpler convolutional neural network and a hyperparameter evaluation in regards to the networks number of convolutional layers. The benchmark OPPORTUNITY dataset is used for training and evaluation from which triaxial accelerometer data from hips and legs are extracted. The results of the evaluation suggests that DeepConvLSTM outperforms simpler models on most locomotive activity recognition, especially at filtering out unclassified data. Further the results show that DeepConvLSTMs performance improves with a higher number of convolutional la...
This paper demonstrates how Slow Feature Analysis (SFA) can be used to transform sensor data before ...
This paper focuses on the classification of seven locomotion modes (sitting, standing, level ground ...
Monitoring horses' behaviors through sensors can yield important information about their health and ...
This project aims to evaluate the deep neural network architecture Deep-ConvLSTM to classify locomot...
This doctoral thesis elaborates possibilities of automatic train type identification in railway S&C ...
The monitoring of physical activities and recognition of motion disorders belong to important diagno...
© 2018, International Association of Computer Science and Information Technology. Human activity rec...
In recent years, due to the widespread usage of various sensors action recognition is becoming more ...
In this paper we, as part of the Sussex-Huawei Locomotion-Transportation (SHL) Recognition Challenge...
To improve the quality of track maintenance work, it is a desire to estimate vehicle dynamic behavio...
International audienceWith the wide availability of inertial sensors in smartphones and connected ob...
The last decade has seen exponential growth in the field of deep learning with deep learning on micr...
Our focus in this research is on the use of deep learning approaches for human activity recognition ...
Deep neural network architectures show superior performance in recognition and prediction tasks of t...
International audienceHuman Activity Recognition (HAR) is a challenging task due to the complexity o...
This paper demonstrates how Slow Feature Analysis (SFA) can be used to transform sensor data before ...
This paper focuses on the classification of seven locomotion modes (sitting, standing, level ground ...
Monitoring horses' behaviors through sensors can yield important information about their health and ...
This project aims to evaluate the deep neural network architecture Deep-ConvLSTM to classify locomot...
This doctoral thesis elaborates possibilities of automatic train type identification in railway S&C ...
The monitoring of physical activities and recognition of motion disorders belong to important diagno...
© 2018, International Association of Computer Science and Information Technology. Human activity rec...
In recent years, due to the widespread usage of various sensors action recognition is becoming more ...
In this paper we, as part of the Sussex-Huawei Locomotion-Transportation (SHL) Recognition Challenge...
To improve the quality of track maintenance work, it is a desire to estimate vehicle dynamic behavio...
International audienceWith the wide availability of inertial sensors in smartphones and connected ob...
The last decade has seen exponential growth in the field of deep learning with deep learning on micr...
Our focus in this research is on the use of deep learning approaches for human activity recognition ...
Deep neural network architectures show superior performance in recognition and prediction tasks of t...
International audienceHuman Activity Recognition (HAR) is a challenging task due to the complexity o...
This paper demonstrates how Slow Feature Analysis (SFA) can be used to transform sensor data before ...
This paper focuses on the classification of seven locomotion modes (sitting, standing, level ground ...
Monitoring horses' behaviors through sensors can yield important information about their health and ...