Multimodal Behavior Analysis in the Wild: Advances and Challenges - Brossura

Libro 6 di 10: Computer Vision and Pattern Recognition
 
9780128146019: Multimodal Behavior Analysis in the Wild: Advances and Challenges

Sinossi

Multimodal Behavioral Analysis in the Wild: Advances and Challenges presents the state-of- the-art in behavioral signal processing using different data modalities, with a special focus on identifying the strengths and limitations of current technologies. The book focuses on audio and video modalities, while also emphasizing emerging modalities, such as accelerometer or proximity data. It covers tasks at different levels of complexity, from low level (speaker detection, sensorimotor links, source separation), through middle level (conversational group detection, addresser and addressee identification), and high level (personality and emotion recognition), providing insights on how to exploit inter-level and intra-level links.

This is a valuable resource on the state-of-the- art and future research challenges of multi-modal behavioral analysis in the wild. It is suitable for researchers and graduate students in the fields of computer vision, audio processing, pattern recognition, machine learning and social signal processing.

Le informazioni nella sezione "Riassunto" possono far riferimento a edizioni diverse di questo titolo.

Informazioni sugli autori

Xavier Alameda-Pineda received his PhD from INRIA and University of Grenoble in2013. He was a post-doctoral researcher at CNRS/GIPSA-Lab and at the University of Trento, in the deep relational learning group. He is a research scientist at INRIA working on signal processing and machine learning for scene and behavior understanding using multimodal data. He is the winner of the best paper award of ACM MM 2015, the best student paper award at IEEE WASPAA 2015 and the best scientific paper award on image, speech, signal and video processing at IEEE ICPR 2016. He is member of IEEE and of ACM SIGMM.

Elisa Ricci is a researcher at FBK and an assistant professor at University of Perugia. She received her PhD from the University of Perugia in 2008. She has since been a postdoctoral researcher at Idiap and FBK, Trento and a visiting researcher at University of Bristol. Her research interests are directed along developing machine learning algorithms for video scene analysis, human behaviour understanding and multimedia content analysis. She is area chair of ACM MM 2016 and of ECCV 2016. She received the IBM Best Student Paper Award at ICPR 2014.

Nicu Sebe is a full professor at the University of Trento, Italy, where he is leading the research in the areas of multimedia information retrieval and human behavior understanding. He was a general co-chair of FG 2008 and ACM MM 2013, and a program chair of CIVR 2007 and 2010, of ACM MM 2007 and 2011, and of ECCV 2016. He is a program chair of ICCV 2017 and of ICPR 2020, and a general chair of ICMR 2017. He is a senior member of IEEE and ACM and a fellow of IAPR.

Dalla quarta di copertina

Multimodal behavior analysis in the wild: an introduction

Auditory-motor perception in natural environments

Designing audio-visual tools to support multisensory disabilities

Multi-modal re-identification of people with wearable sensors

Recognizing Social Relationships from an Egocentric Vision Perspective

Lifelog Retrieval for Memory Stimulation of People with Memory Impairment

Activity recognition from visual lifelogs: State of the art and future challenges

Understanding the scene from a first-person perspective

Complex Conversational Scene Analysis using Wearable Sensors

Wearable systems for improving museum experience

Animal behavior in museums

Separating multiple moving sound sources

Crowd Behaviour Analysis from Fixed and Moving Cameras

Detecting conversational groups in images and sequences: a game-theoretic perspective

Multimodal open-domain conversations with robotic platforms

Multimodal interpersonal skill training

Affective facial computing in the wild

Automatic Recognition of Self-Reported and Perceived Emotions

Real-world automatic continuous affect recognition from audiovisual signals

Deep audio-visual emotion recognition

We are less free than how we think: regular patterns in nonverbal communication

Human Postural Sway Estimation from Noisy Observations

Video-Based Emotion Recognition in the Wild

Conclusions

Le informazioni nella sezione "Su questo libro" possono far riferimento a edizioni diverse di questo titolo.