6533b7dbfe1ef96bd126ff9b

RESEARCH PRODUCT

Video-Based Depression Detection Using Local Curvelet Binary Patterns in Pairwise Orthogonal Planes

Kostas MariasManolis TsiknakisGuillaume LemaitreFabrice MeriaudeauPanagiotis G. SimosAnastasia PampouchidouFan Yang

subject

Local binary patternsFeature extractionVideo Recording02 engineering and technology[ SPI.SIGNAL ] Engineering Sciences [physics]/Signal and Image processingMachine learningcomputer.software_genreField (computer science)0502 economics and business0202 electrical engineering electronic engineering information engineeringCurveletHumansDiagnosis Computer-Assisted[SPI.SIGNAL] Engineering Sciences [physics]/Signal and Image processingbusiness.industryDepression05 social sciencesReproducibility of ResultsPattern recognitionActive appearance modelFaceBenchmark (computing)020201 artificial intelligence & image processingPairwise comparisonArtificial intelligencebusinessPsychologycomputer[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processing050203 business & managementAlgorithmsCurse of dimensionality

description

International audience; Depression is an increasingly prevalent mood disorder. This is the reason why the field of computer-based depression assessment has been gaining the attention of the research community during the past couple of years. The present work proposes two algorithms for depression detection, one Frame-based and the second Video-based, both employing Curvelet transform and Local Binary Patterns. The main advantage of these methods is that they have significantly lower computational requirements, as the extracted features are of very low dimensionality. This is achieved by modifying the previously proposed algorithm which considers Three-Orthogonal-Planes, to only Pairwise-Orthogonal-Planes. Performance of the algorithms was tested on the benchmark dataset provided by the Audio/Visual Emotion Challenge 2014, with the person-specific system achieving 97.6% classification accuracy, and the person-independed one yielding promising preliminary results of 74.5% accuracy. The paper concludes with open issues, proposed solutions, and future plans.

https://hal-univ-bourgogne.archives-ouvertes.fr/hal-01354878/file/EMBC'16_0193_FINAL_MS.pdf