In this paper, we introduce a model to classify cooking activities using their visual and temporal coherence information. We fuse multiple feature descriptors for fine-grained activity recognition as we would need every single detail to catch even subtle differences between classes with low inter-class variance. Considering the observation that daily activities such as cooking are likely to be performed in sequential patterns of activities, we also model temporal coherence of activities. By combining both aspects, we show that we can improve the overall accuracy of cooking recognition tasks. © Copyright 2013 ACM
International audienceNutrition related health conditions can seriously decrease quality of life; a ...
This work describes the recognition of human activity based on the interaction between people and ob...
Activity recognition is fundamentally necessary in many real-world applications, making it a valuabl...
The dataset contains the data of acceleration sensors attached to a person during the execution of a...
While activity recognition is a current focus of research the challenging problem of fine-grained ac...
The dataset contains the data of acceleration sensors attached to a person during the execution of a...
AbstractFormalizing computational models for everyday human activities remains an open challenge. Ma...
Recognizing complex activities is a challenging research problem, particularly in the presence of st...
Recognizing complex activities is a challenging research problem, particularly in the presence of st...
Temporal segmentation of human motion into actions is central to the understanding and building of c...
Abstract—In this paper, we address a novel task ”cooking recognition task”. Cooking recognition task...
In this dissertation, we discuss our work on analyzing cooking content for the ultimate goal ofautom...
This paper presents a real time approach to the recognition of human activity based on the interacti...
International audienceWellbeing is often affected by health-related conditions. One type of such con...
Identifying human activities is a key task for the development of advanced and effective ubiquitous ...
International audienceNutrition related health conditions can seriously decrease quality of life; a ...
This work describes the recognition of human activity based on the interaction between people and ob...
Activity recognition is fundamentally necessary in many real-world applications, making it a valuabl...
The dataset contains the data of acceleration sensors attached to a person during the execution of a...
While activity recognition is a current focus of research the challenging problem of fine-grained ac...
The dataset contains the data of acceleration sensors attached to a person during the execution of a...
AbstractFormalizing computational models for everyday human activities remains an open challenge. Ma...
Recognizing complex activities is a challenging research problem, particularly in the presence of st...
Recognizing complex activities is a challenging research problem, particularly in the presence of st...
Temporal segmentation of human motion into actions is central to the understanding and building of c...
Abstract—In this paper, we address a novel task ”cooking recognition task”. Cooking recognition task...
In this dissertation, we discuss our work on analyzing cooking content for the ultimate goal ofautom...
This paper presents a real time approach to the recognition of human activity based on the interacti...
International audienceWellbeing is often affected by health-related conditions. One type of such con...
Identifying human activities is a key task for the development of advanced and effective ubiquitous ...
International audienceNutrition related health conditions can seriously decrease quality of life; a ...
This work describes the recognition of human activity based on the interaction between people and ob...
Activity recognition is fundamentally necessary in many real-world applications, making it a valuabl...