1 A Survey of Affect Recognition Methods: Audio, Visual, and Spontaneous Expressions Zhihong Zeng, Maja Pantic, Glenn I. Roisman, Thomas S. Huang Reported.

Slides:



Advertisements
Similar presentations
UNIT-2 Data Preprocessing LectureTopic ********************************************** Lecture-13Why preprocess the data? Lecture-14Data cleaning Lecture-15Data.
Advertisements

Ch2 Data Preprocessing part3 Dr. Bernard Chen Ph.D. University of Central Arkansas Fall 2009.
Decision Tree Approach in Data Mining
Clustering: Introduction Adriano Joaquim de O Cruz ©2002 NCE/UFRJ
An Overview of Machine Learning
AUTOMATIC SPEECH CLASSIFICATION TO FIVE EMOTIONAL STATES BASED ON GENDER INFORMATION ABSTRACT We report on the statistics of global prosodic features of.
Week 9 Data Mining System (Knowledge Data Discovery)
Data Mining.
Techniques for Emotion Classification Julia Hirschberg COMS 4995/6998 Thanks to Kaushal Lahankar.
ML ALGORITHMS. Algorithm Types Classification (supervised) Given -> A set of classified examples “instances” Produce -> A way of classifying new examples.
EKMAN’S FACIAL EXPRESSIONS STUDY A Demonstration.
The Discrete Emotions Theory Controversy in Psychology and Relevance to Consumer Behavior Louis Daily, Fiona Sussan, and Norris Krueger University of Phoenix.
Recognizing Emotions in Facial Expressions
Major Tasks in Data Preprocessing(Ref Chap 3) By Prof. Muhammad Amir Alam.
© 2013 IBM Corporation Efficient Multi-stage Image Classification for Mobile Sensing in Urban Environments Presented by Shashank Mujumdar IBM Research,
Introduction to machine learning
Data Mining Techniques
Data Mining Chun-Hung Chou
Presented by Tienwei Tsai July, 2005
Chapter 1 Introduction to Data Mining
Introduction to Data Mining Group Members: Karim C. El-Khazen Pascal Suria Lin Gui Philsou Lee Xiaoting Niu.
Chapter 9 Neural Network.
Data Mining Chapter 1 Introduction -- Basic Data Mining Tasks -- Related Concepts -- Data Mining Techniques.
Introduction to machine learning and data mining 1 iCSC2014, Juan López González, University of Oviedo Introduction to machine learning Juan López González.
Data Reduction. 1.Overview 2.The Curse of Dimensionality 3.Data Sampling 4.Binning and Reduction of Cardinality.
Multimodal Information Analysis for Emotion Recognition
Data MINING Data mining is the process of extracting previously unknown, valid and actionable information from large data and then using the information.
Data Preprocessing Dr. Bernard Chen Ph.D. University of Central Arkansas Fall 2010.
Advanced Database Course (ESED5204) Eng. Hanan Alyazji University of Palestine Software Engineering Department.
Data Reduction via Instance Selection Chapter 1. Background KDD  Nontrivial process of identifying valid, novel, potentially useful, and ultimately understandable.
Prepared by: Mahmoud Rafeek Al-Farra College of Science & Technology Dep. Of Computer Science & IT BCs of Information Technology Data Mining
Chapter 6 Classification and Prediction Dr. Bernard Chen Ph.D. University of Central Arkansas.
Data Preprocessing Compiled By: Umair Yaqub Lecturer Govt. Murray College Sialkot.

Support Vector Machines and Gene Function Prediction Brown et al PNAS. CS 466 Saurabh Sinha.
Performance Comparison of Speaker and Emotion Recognition
1 Unsupervised Learning and Clustering Shyh-Kang Jeng Department of Electrical Engineering/ Graduate Institute of Communication/ Graduate Institute of.
GENDER AND AGE RECOGNITION FOR VIDEO ANALYTICS SOLUTION PRESENTED BY: SUBHASH REDDY JOLAPURAM.
SAD, ANGER, FEAR, DISGUST, HAPPY, CONTEMPT AND OTHERS ARE EVOLUTIONARILY DICTATED ADAPTIVE SURVIVAL MECHANISMS Darwin Tompkins Ekman Izard.
Iterative similarity based adaptation technique for Cross Domain text classification Under: Prof. Amitabha Mukherjee By: Narendra Roy Roll no: Group:
Data Mining and Decision Support
1 Classification: predicts categorical class labels (discrete or nominal) classifies data (constructs a model) based on the training set and the values.
WHAT IS DATA MINING?  The process of automatically extracting useful information from large amounts of data.  Uses traditional data analysis techniques.
WHAT IS DATA MINING?  The process of automatically extracting useful information from large amounts of data.  Uses traditional data analysis techniques.
Ekman’s Facial Expressions Study A Demonstration.
Facial Expressions and Emotions Mental Health. Total Participants Adults (30+ years old)328 Adults (30+ years old) Adolescents (13-19 years old)118 Adolescents.
Anomaly Detection Carolina Ruiz Department of Computer Science WPI Slides based on Chapter 10 of “Introduction to Data Mining” textbook by Tan, Steinbach,
Data Mining: Data Prepossessing What is to be done before we get to Data Mining?
Pattern Recognition Lecture 20: Data Mining 2 Dr. Richard Spillman Pacific Lutheran University.
Data Mining, Machine Learning, Data Analysis, etc. scikit-learn
Course Outline 1. Pengantar Data Mining 2. Proses Data Mining
Machine Learning with Spark MLlib
What Is Cluster Analysis?
Applying Deep Neural Network to Enhance EMPI Searching
DATA MINING © Prentice Hall.
Chapter 6 Classification and Prediction
An Enhanced Support Vector Machine Model for Intrusion Detection
Classification and Prediction
Data Mining II: Association Rule mining & Classification
Prepared by: Mahmoud Rafeek Al-Farra
Classification & Prediction
Supervised vs. unsupervised Learning
Classification and Prediction
CSCI N317 Computation for Scientific Applications Unit Weka
Data Mining, Machine Learning, Data Analysis, etc. scikit-learn
Intro to Machine Learning
Data Mining, Machine Learning, Data Analysis, etc. scikit-learn
©Jiawei Han and Micheline Kamber
Domingo Mery Department of Computer Science
Low-Rank Sparse Feature Selection for Patient Similarity Learning
Presentation transcript:

1 A Survey of Affect Recognition Methods: Audio, Visual, and Spontaneous Expressions Zhihong Zeng, Maja Pantic, Glenn I. Roisman, Thomas S. Huang Reported by Chengsheng Mao 2011 年 1 月 11 日

2 The Description of Emotion Discrete categories description: the most popular example of this description this description is the basic emotion categories, which include happiness, sadness, fear, anger, disgust, and surprise. This description of basic emotions was specially supported by the cross-cultural studies conducted by Ekman [40], [42]. Dimensional description: the evaluation and activation dimensions are expected to reflect the main aspects of emotion. the evaluation and activation dimensions are expected to reflect the main aspects of emotion.

3 Audio and/or Visual Databases of Human Affective Behavior

4 Related work

5 Challenges Data collection for emotion recognition: –Spontaneous versus posed –Lab setting versus real-world –Expression versus feeling –Open recording versus hidden recording –Emotion-purpose versus other-purpose Labeling date for emotion recognition : –If constantly asks a user for his/her emotion, we can be quite sure that eventually the response would be that of anger or annoyance. –Further research is required to achieve maximum utilization of unlabeled data for the problem of emotion recognition

6 The research method on emotion

7 Data mining Data preprocessing –Data cleaning is applied to remove noise and correct inconsistencies in the data. –Data transformations, normalization may improve the accuracy and efficiency of mining algorithms. –Data reduction techniques can be applied to obtain a reduced representation of the data set that is much smaller in volume, yet closely maintains the integrity of the original data.

8 Classification and prediction –A classifier or predictor based on a certain algorithm is built by analyzing or learning from a training set made up of database tuples and their associated class labels or values. (supervised learning) –For classification, the classifier is used to classify the test data. Then the classification accuracy is calculated to estimate the classifier. –For prediction, the values are predicted through the predictor and then an error based on the difference between the predicted value and the actual known value is computed to estimate the predictor.

9 Cluster analysis and discriminant analysis Clustering is the process of grouping the data into classes or clusters, so that objects within a cluster have high similarity in comparison to one another but are very dissimilar to objects in other clusters. (unsupervised learning) Discriminant analysis find the discriminant functions based on the training datum and their class labels. Then classify the data unknown category according to the discriminant functions.