Abstract—Recognizing activities in a home environment is challenging due to the variety of activities that can be performed at home and the complexity of the environment. Multiple cameras are usually needed to cover the whole observation area. This adds camera fusion as another challenge to activity recognition. We propose a hierarchical approach that recognizes both coarse-level and fine-level activities, in which different image features and learning methods are used for different activities based on their characteristics. The paper focuses on discussing the second-level of activity recognition with spatio-temporal features. Specifically, three fusion approaches for multiview activity recognition with spatio-temporal features are presente...
Local spatio-temporal features have been shown to be effective and robust in order to represent simp...
© Springer International Publishing AG 2018. In this chapter, we will describe our comprehensive lit...
The rapid development of microsystems technology with the availability of various machine learning a...
The focus of the paper is on studying ??ve di??erent meth- ods to combine multi-view data from an un...
International audienceThis paper describes the results of experiments where information about places...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
Activity recognition deals with the task of figuring out a person’s current activity based on the re...
Increasing attention to the research on activity monitoring in smart homes has motivated the employm...
The smart home has begun playing an important role in supporting independent living by monitoring th...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
A smart home equipped with a diversity of multimodal sensors is a meaningful setting for acquiring t...
Abstract. The local feature based approaches have become popular for activity recognition. A local f...
Activity recognition in a smart home context is inherently difficult due to the variable nature of h...
Human activities in a scene are often monitored by human agents in order to recognize potential thre...
The ability to accurately recognize human household activities is an important stepping stone toward...
Local spatio-temporal features have been shown to be effective and robust in order to represent simp...
© Springer International Publishing AG 2018. In this chapter, we will describe our comprehensive lit...
The rapid development of microsystems technology with the availability of various machine learning a...
The focus of the paper is on studying ??ve di??erent meth- ods to combine multi-view data from an un...
International audienceThis paper describes the results of experiments where information about places...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
Activity recognition deals with the task of figuring out a person’s current activity based on the re...
Increasing attention to the research on activity monitoring in smart homes has motivated the employm...
The smart home has begun playing an important role in supporting independent living by monitoring th...
Segmenting sensor events for activity recognition has many key challenges due to its unsupervised na...
A smart home equipped with a diversity of multimodal sensors is a meaningful setting for acquiring t...
Abstract. The local feature based approaches have become popular for activity recognition. A local f...
Activity recognition in a smart home context is inherently difficult due to the variable nature of h...
Human activities in a scene are often monitored by human agents in order to recognize potential thre...
The ability to accurately recognize human household activities is an important stepping stone toward...
Local spatio-temporal features have been shown to be effective and robust in order to represent simp...
© Springer International Publishing AG 2018. In this chapter, we will describe our comprehensive lit...
The rapid development of microsystems technology with the availability of various machine learning a...