Automated Facial Expression Analysis for Research and Clinical Use
用于研究和临床用途的自动面部表情分析
基本信息
- 批准号:8816133
- 负责人:
- 金额:$ 45.25万
- 依托单位:
- 依托单位国家:美国
- 项目类别:
- 财政年份:2012
- 资助国家:美国
- 起止时间:2012-05-01 至 2016-02-29
- 项目状态:已结题
- 来源:
- 关键词:AddressAlgorithmsAnxietyBehaviorBehavioral SciencesBenchmarkingBipolar DisorderClinicalCodeCommunitiesComputational algorithmComputer Vision SystemsComputer softwareComputer-Assisted Image AnalysisDataData SetDatabasesDetectionDevelopmentDiseaseEmotionsEmployee StrikesEnvironmentEtiologyFaceFacial ExpressionGenderGeneric DrugsHeadHourHumanImageryInstructionInterviewInterviewerLabelLaboratoriesLearningLightingMachine LearningMajor Depressive DisorderManualsMeasurementMeasuresMethodsModelingMotionMovementNaturePainParticipantPersonal ComputersPersonsProcessPsychopathologyReportingResearchResearch PersonnelRunningSchizophreniaSignal TransductionStructureSystemTechniquesTestingTimeTrainingTreatment outcomeUnited States National Institutes of HealthWorkaddictionbaseclinical practicefollow-upinsightmeetingsnervous system disorderpositive emotional stateskin colorsuicidal risktool
项目摘要
DESCRIPTION (provided by applicant): Facial expression has been a focus of emotion research for over a hundred years. In recent decades observations of facial expressions have yielded critical and dramatic insights about the etiology of psychopathology, and have proven capable of predicting treatment outcomes (see Ekman & Rosenberg, 2005). Despite these original striking findings, there has been surprisingly little follow-up work. The primary reason fr the lack of sustained research is that the most reliable manual systems for measuring facial expression often require considerable training and are labor intensive. Automated measurement using computer vision and machine learning seeks to address the need for valid, efficient, and reproducible measurement. Recent systems have shown promise in fairly small studies using posed behavior or structured contexts with confederates, or trained interviewers, or pre-trained (person-specific) face models. For automated coding to be applied in real-world settings, a large data base with ample variability in pose, head motion, skin color, gender, partial occlusion, and expression intensity is needed. We have developed a unique database that meets this need and the algorithms necessary to enable robust automated coding. The database consists of 720 participants in three-person groups engaged in a group formation task. In a preliminary study, we demonstrated that our algorithms can successfully code two key facial signals associated with human emotion in this relatively unconstrained context (Cohn & Sayette, 2010). To achieve efficient, accurate, and valid measurement of facial expression usable in research and clinical settings, we aim to 1) train and validate classifiers to achieve reliable facial expression detectin across this unprecedentedly large, diverse data set; 2) extend the previous person-specific methods to person-independent (generic) facial feature detection, tracking, and alignment; and 3) make these tools available for research and clinical use.
描述(申请人提供):一百多年来,面部表情一直是情绪研究的焦点。近几十年来,对面部表情的观察对精神病理学的病因学产生了批判性和戏剧性的见解,并被证明能够预测治疗结果(见Ekman&Rosenberg,2005)。尽管有这些最初令人震惊的发现,但令人惊讶的是,后续工作很少。缺乏持续研究的主要原因是,最可靠的测量面部表情的手动系统通常需要大量培训,而且是劳动密集型的。使用计算机视觉和机器学习的自动测量寻求解决对有效、高效和可重复测量的需求。最近的系统在相当小的研究中显示出了希望,使用姿势行为或结构化背景与同伙,或训练有素的采访者,或预先训练(特定于人的)脸部模型。为了将自动编码应用于真实世界的设置,需要一个在姿势、头部运动、肤色、性别、部分遮挡和表情强度方面具有充分可变性的大型数据库。我们开发了一个独特的数据库,以满足这一需求和实现健壮的自动编码所需的算法。该数据库由720名参与者组成,他们分成三个小组,参与一个小组组建任务。在一项初步研究中,我们证明了我们的算法可以在这种相对不受限制的环境中成功地编码与人类情感相关的两个关键面部信号(Cohn&Sayette,2010)。为了在研究和临床环境中实现对面部表情的高效、准确和有效的测量,我们的目标是1)训练和验证分类器,以在这个前所未有的海量、多样化的数据集上实现可靠的面部表情检测;2)将以前针对特定人的方法扩展到独立于人的(通用)面部特征检测、跟踪和对齐;以及3)使这些工具可用于研究和临床使用。
项目成果
期刊论文数量(0)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)
数据更新时间:{{ journalArticles.updateTime }}
{{
item.title }}
{{ item.translation_title }}
- DOI:
{{ item.doi }} - 发表时间:
{{ item.publish_year }} - 期刊:
- 影响因子:{{ item.factor }}
- 作者:
{{ item.authors }} - 通讯作者:
{{ item.author }}
数据更新时间:{{ journalArticles.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ monograph.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ sciAawards.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ conferencePapers.updateTime }}
{{ item.title }}
- 作者:
{{ item.author }}
数据更新时间:{{ patent.updateTime }}
JEFFREY F COHN其他文献
JEFFREY F COHN的其他文献
{{
item.title }}
{{ item.translation_title }}
- DOI:
{{ item.doi }} - 发表时间:
{{ item.publish_year }} - 期刊:
- 影响因子:{{ item.factor }}
- 作者:
{{ item.authors }} - 通讯作者:
{{ item.author }}
{{ truncateString('JEFFREY F COHN', 18)}}的其他基金
Modeling the Dynamics of Early Communication and Development
模拟早期沟通和发展的动态
- 批准号:
9124921 - 财政年份:2013
- 资助金额:
$ 45.25万 - 项目类别:
Modeling the Dynamics of Early Communication and Development
模拟早期沟通和发展的动态
- 批准号:
8711519 - 财政年份:2013
- 资助金额:
$ 45.25万 - 项目类别:
Modeling the Dynamics of Early Communication and Development
模拟早期沟通和发展的动态
- 批准号:
8452565 - 财政年份:2013
- 资助金额:
$ 45.25万 - 项目类别:
Automated Facial Expression Analysis for Research and Clinical Use
用于研究和临床用途的自动面部表情分析
- 批准号:
8464280 - 财政年份:2012
- 资助金额:
$ 45.25万 - 项目类别:
Automated Facial Expression Analysis for Research and Clinical Use
用于研究和临床用途的自动面部表情分析
- 批准号:
8633060 - 财政年份:2012
- 资助金额:
$ 45.25万 - 项目类别:
Automatic Multimodal Affect Detection for Research and Clinical Use
用于研究和临床应用的自动多模式情感检测
- 批准号:
9912818 - 财政年份:2012
- 资助金额:
$ 45.25万 - 项目类别:
Automatic Multimodal Affect Detection for Research and Clinical Use
用于研究和临床应用的自动多模式情感检测
- 批准号:
10162316 - 财政年份:2012
- 资助金额:
$ 45.25万 - 项目类别:
Automatic Multimodal Affect Detection for Research and Clinical Use
用于研究和临床应用的自动多模式情感检测
- 批准号:
9534747 - 财政年份:2012
- 资助金额:
$ 45.25万 - 项目类别:
Automated Facial Expression Analysis for Research and Clinical Use
用于研究和临床用途的自动面部表情分析
- 批准号:
8270831 - 财政年份:2012
- 资助金额:
$ 45.25万 - 项目类别:
FACIAL EXPRESSION ANALYSIS BY COMPUTER IMAGE PROCESSING
通过计算机图像处理进行面部表情分析
- 批准号:
2250697 - 财政年份:1995
- 资助金额:
$ 45.25万 - 项目类别:
相似海外基金
DMS-EPSRC: Asymptotic Analysis of Online Training Algorithms in Machine Learning: Recurrent, Graphical, and Deep Neural Networks
DMS-EPSRC:机器学习中在线训练算法的渐近分析:循环、图形和深度神经网络
- 批准号:
EP/Y029089/1 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Research Grant
CAREER: Blessing of Nonconvexity in Machine Learning - Landscape Analysis and Efficient Algorithms
职业:机器学习中非凸性的祝福 - 景观分析和高效算法
- 批准号:
2337776 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Continuing Grant
CAREER: From Dynamic Algorithms to Fast Optimization and Back
职业:从动态算法到快速优化并返回
- 批准号:
2338816 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Continuing Grant
CAREER: Structured Minimax Optimization: Theory, Algorithms, and Applications in Robust Learning
职业:结构化极小极大优化:稳健学习中的理论、算法和应用
- 批准号:
2338846 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Continuing Grant
CRII: SaTC: Reliable Hardware Architectures Against Side-Channel Attacks for Post-Quantum Cryptographic Algorithms
CRII:SaTC:针对后量子密码算法的侧通道攻击的可靠硬件架构
- 批准号:
2348261 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Standard Grant
CRII: AF: The Impact of Knowledge on the Performance of Distributed Algorithms
CRII:AF:知识对分布式算法性能的影响
- 批准号:
2348346 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Standard Grant
CRII: CSR: From Bloom Filters to Noise Reduction Streaming Algorithms
CRII:CSR:从布隆过滤器到降噪流算法
- 批准号:
2348457 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Standard Grant
EAGER: Search-Accelerated Markov Chain Monte Carlo Algorithms for Bayesian Neural Networks and Trillion-Dimensional Problems
EAGER:贝叶斯神经网络和万亿维问题的搜索加速马尔可夫链蒙特卡罗算法
- 批准号:
2404989 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Standard Grant
CAREER: Efficient Algorithms for Modern Computer Architecture
职业:现代计算机架构的高效算法
- 批准号:
2339310 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Continuing Grant
CAREER: Improving Real-world Performance of AI Biosignal Algorithms
职业:提高人工智能生物信号算法的实际性能
- 批准号:
2339669 - 财政年份:2024
- 资助金额:
$ 45.25万 - 项目类别:
Continuing Grant