Activity Recognition in Pervasive Intelligent EnvironmentsLiming Chen, Chris D. Nugent, Jit Biswas, Jesse Hoey Springer Science & Business Media, 4.05.2011 г. - 329 страници This book consists of a number of chapters addressing different aspects of activity recognition, roughly in three main categories of topics. The first topic will be focused on activity modeling, representation and reasoning using mathematical models, knowledge representation formalisms and AI techniques. The second topic will concentrate on activity recognition methods and algorithms. Apart from traditional methods based on data mining and machine learning, we are particularly interested in novel approaches, such as the ontology-based approach, that facilitate data integration, sharing and automatic/automated processing. In the third topic we intend to cover novel architectures and frameworks for activity recognition, which are scalable and applicable to large scale distributed dynamic environments. In addition, this topic will also include the underpinning technological infrastructure, i.e. tools and APIs, that supports function/capability sharing and reuse, and rapid development and deployment of technological solutions. The fourth category of topic will be dedicated to representative applications of activity recognition in intelligent environments, which address the life cycle of activity recognition and their use for novel functions of the end-user systems with comprehensive implementation, prototyping and evaluation. This will include a wide range of application scenarios, such as smart homes, intelligent conference venues and cars. |
Съдържание
1 | |
2 A Possibilistic Approach for Activity Recognition in Smart Homes for Cognitive Assistance to Alzheimers Patients | 33 |
3 Multiuser Activity Recognition in a Smart Home | 59 |
a Logicbased Approach | 83 |
An Interactive TVbasedAmbient Assisted Living Platform | 111 |
6 An Ontologybased Contextaware Approach forBehaviour Analysis | 127 |
7 Users Behavior Classification Model for Smart Houses Occupant Prediction | 149 |
Benchmark and Software | 165 |
9 Smart Sweet Home A Pervasive Environment for Sensing our Daily Activity? | 187 |
10 Synthesising Generative Probabilistic Models forHighLevel Activity Recognition | 209 |
11 Ontologybased Learning Framework forActivity Assistance in an Adaptive Smart Home | 237 |
12 Benefits of Dynamically Reconfigurable ActivityRecognition in Distributed Sensing Environments | 265 |
13 Embedded Activity Monitoring Methods | 291 |
14 Activity Recognition and Healthier Food Preparation | 313 |
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Често срещани думи и фрази
accelerometers action activity models activity recognition activity recognition system activity traces ADL ontology algorithms Ambient Ambient Intelligence analysis applications approach Artificial Intelligence assistance atomic activities behavior capture CHMM classification concept conditional random fields Conf context-aware cooking dataset defined described Description Logics detection detector events distributed domain knowledge dynamic elderly evaluate example F1 score FCRF feature formal framework granularity hidden Markov models human activities IEEE inference instance interactions Kautz kitchen labels learning method monitoring multi-user activities multiple objects observed ontology-based parameters patterns person Pervasive Computing possible posture prediction probabilistic models Proc recognition performance recognize reconfiguration represent representation RFID scenario semantic sensor data sensor nodes sequence smart environments smart home specific supervised learning symbols tags task modelling temporal timeslice tion transition Ubiquitous Computing user’s wearable sensors wireless