4,761 research outputs found
Boosted Multiple Kernel Learning for First-Person Activity Recognition
Activity recognition from first-person (ego-centric) videos has recently
gained attention due to the increasing ubiquity of the wearable cameras. There
has been a surge of efforts adapting existing feature descriptors and designing
new descriptors for the first-person videos. An effective activity recognition
system requires selection and use of complementary features and appropriate
kernels for each feature. In this study, we propose a data-driven framework for
first-person activity recognition which effectively selects and combines
features and their respective kernels during the training. Our experimental
results show that use of Multiple Kernel Learning (MKL) and Boosted MKL in
first-person activity recognition problem exhibits improved results in
comparison to the state-of-the-art. In addition, these techniques enable the
expansion of the framework with new features in an efficient and convenient
way.Comment: First published in the Proceedings of the 25th European Signal
Processing Conference (EUSIPCO-2017) in 2017, published by EURASI
Affective Man-Machine Interface: Unveiling human emotions through biosignals
As is known for centuries, humans exhibit an electrical profile. This profile is altered through various psychological and physiological processes, which can be measured through biosignals; e.g., electromyography (EMG) and electrodermal activity (EDA). These biosignals can reveal our emotions and, as such, can serve as an advanced man-machine interface (MMI) for empathic consumer products. However, such a MMI requires the correct classification of biosignals to emotion classes. This chapter starts with an introduction on biosignals for emotion detection. Next, a state-of-the-art review is presented on automatic emotion classification. Moreover, guidelines are presented for affective MMI. Subsequently, a research is presented that explores the use of EDA and three facial EMG signals to determine neutral, positive, negative, and mixed emotions, using recordings of 21 people. A range of techniques is tested, which resulted in a generic framework for automated emotion classification with up to 61.31% correct classification of the four emotion classes, without the need of personal profiles. Among various other directives for future research, the results emphasize the need for parallel processing of multiple biosignals
- ā¦