Computer vision techniques applied on images opportunistically captured from body-worn cameras or mobile phones offer tremendous potential for vision-based context awareness. In this paper, we evaluate the potential to recognise the modes of locomotion and transportation of mobile users, by analysing single images captured by body-worn cameras. We evaluate this with the publicly available Sussex-Huawei Locomotion and Transportation Dataset, which includes 8 transportation and locomotion modes performed over 7 months by 3 users. We present a baseline performance obtained through crowd sourcing using Amazon Mechanical Turk. Humans infered the correct modes of transportations from images with an F1-score of 52%. The performance obtained by fiv...
Transportation is a significant component of human lives and understanding how individuals travel is...
In this paper, we focus on simultaneous inference of transportation modes and human activities in da...
Smartphone-based identification of the mode of transportation of the user is important for context-a...
Computer vision techniques applied on images opportunistically captured from body-worn cameras or mo...
Vision-based human activity recognition can provide rich contextual information but has traditionall...
The Sussex-Huawei Locomotion-Transportation (SHL) Recognition Challenges aim to advance and capture ...
Travel mode recognition as well as activity recognition has gained some momentum in recent years. Tr...
We present the first work that investigates the potential of improving the performance of transporta...
Scientific advances build on reproducible research which need publicly available benchmark datasets....
This paper presents the results of research on the use of smartphone sensors (namely, GPS and accele...
In this paper we summarize the contributions of participants to the third Sussex-Huawei Locomotion-T...
In this work we investigate the use of machine learning models for the management and monitoring of ...
Transportation and locomotion mode recognition from multimodal smartphone sensors is useful to provi...
Transportation is a significant component of human lives and understanding how individuals travel is...
Thanks to the development in recent years, the placement of miniaturized sensors such as acceleromet...
Transportation is a significant component of human lives and understanding how individuals travel is...
In this paper, we focus on simultaneous inference of transportation modes and human activities in da...
Smartphone-based identification of the mode of transportation of the user is important for context-a...
Computer vision techniques applied on images opportunistically captured from body-worn cameras or mo...
Vision-based human activity recognition can provide rich contextual information but has traditionall...
The Sussex-Huawei Locomotion-Transportation (SHL) Recognition Challenges aim to advance and capture ...
Travel mode recognition as well as activity recognition has gained some momentum in recent years. Tr...
We present the first work that investigates the potential of improving the performance of transporta...
Scientific advances build on reproducible research which need publicly available benchmark datasets....
This paper presents the results of research on the use of smartphone sensors (namely, GPS and accele...
In this paper we summarize the contributions of participants to the third Sussex-Huawei Locomotion-T...
In this work we investigate the use of machine learning models for the management and monitoring of ...
Transportation and locomotion mode recognition from multimodal smartphone sensors is useful to provi...
Transportation is a significant component of human lives and understanding how individuals travel is...
Thanks to the development in recent years, the placement of miniaturized sensors such as acceleromet...
Transportation is a significant component of human lives and understanding how individuals travel is...
In this paper, we focus on simultaneous inference of transportation modes and human activities in da...
Smartphone-based identification of the mode of transportation of the user is important for context-a...