Paul Ekman Torrent Pdf Finder

File 16602.torrent. Paul Ekman Pack (2 eBooks - PDFs). Unmasking the Face: A Guide to Recognizing Emotions From Facial Clues (1975).

A facial expression database is a collection of images or video clips with facial expressions of a range of emotions.Well-annotated (emotion-tagged) media content of facial behavior is essential for training, testing, and validation of algorithms for the development of expression recognition systems. The emotion annotation can be done in discrete emotion labels or on a continuous scale. Most of the databases are usually based on the basic emotions theory (by Paul Ekman) which assumes the existence of six discrete basic emotions (anger, fear, disgust, surprise, joy, sadness). However, some databases include the emotion tagging in continuous arousal-valence scale.

In posed expression databases, the participants are asked to display different basic emotional expressions, while in spontaneous expression database, the expressions are natural. Spontaneous expressions differ from posed ones remarkably in terms of intensity, configuration, and duration. Apart from this, synthesis of some AUs are barely achievable without undergoing the associated emotional state. Therefore, in most cases, the posed expressions are exaggerated, while the spontaneous ones are subtle and differ in appearance.

Many publicly available databases are categorized here.[1][2] Here are some details of the facial expression databases.

DatabaseFacial expressionNumber of SubjectsNumber of images/videosGray/ColorResolution, Frame rateGround truthType
Ryerson Audio-Visual Database of Emotional Speech and Song (RAVDESS) [3]downloadSpeech: Calm, happy, sad, angry, fearful, surprise, disgust, and neutral.

Song: Calm, happy, sad, angry, fearful, and neutral. Each expression at two levels of emotional intensity.

24 7356 video and audio filesColor1280x720 (720p)Facial expression labels

Ratings provided by 319 human raters

Software para icom ic-f121. Powerful 50W (VHF), 45W (UHF) Output 6 Prog. Buttons and Independent Volume Knob 4W typ. Front-mounted Speaker.

Posed
Extended Cohn-Kanade Dataset (CK+)[4]downloadneutral, sadness, surprise, happiness, fear, anger, contempt and disgust123 593 image sequences (327 sequences having discrete emotion labels)Mostly gray640* 490Facial expression labels and FACS (AU label for final frame in each image sequence)Posed; spontaneous smiles
Japanese Female Facial Expressions (JAFFE)[5]downloadneutral, sadness, surprise, happiness, fear, anger, and disgust10213 static imagesGray256* 256Facial expression labelPosed
MMI Database[6]download431280 videos and over 250 imagesColor720* 576AU label for the image frame with apex facial expression in each image sequencePosed and Spontaneous
Belfast Database[7]downloadSet 1 (disgust, fear, amusement, frustration, surprise)114570 video clipsColor720*576Natural Emotion
Set 2 (disgust, fear, amusement, frustration, surprise, anger, sadness)82650 video clipsColor
Set 3 (disgust, fear, amusement)60180 video clipsColor1920*1080
DISFA[8]download-274,845 video framesColor1024*768; 20 fpsAU intensity for each video frame (12 AUs)Spontaneous
Multimedia Understanding Group (MUG)[9]downloadneutral, sadness, surprise, happiness, fear, anger, and disgust861462 sequencesColor896*896, 19fpsEmotion labelsPosed
Indian Spontaneous Expression Database (ISED)[10]downloadsadness, surprise, happiness, and disgust50428 videos Color1920* 1080, 50 fpsEmotion labelsSpontaneous
Radboud Faces Database (RaFD)[11]downloadneutral, sadness, contempt, surprise, happiness, fear, anger, and disgust67Three different gaze directions and five camera angles (8*67*3*5=8040 images)Color681*1024Emotion labelsPosed
Oulu-CASIA NIR-VIS database downloadsurprise, happiness, sadness, anger, fear and disgust80three different illumination conditions: normal, weak and dark (total 2880 video sequences)Color320×240Posed
FERG (Facial Expression Research Group Database)-DB[12] for stylized charactersangry, disgust, fear, joy, neutral, sad, surprise655767Color768x768Emotion labelsFrontal pose
AffectNet[13]neutral, happy, sad, surprise, fear, disgust, anger, contempt~450,000 manually annotated

The value frontier ebook torrents free. ~ 500,000 automatically annotated

ColorVariousEmotion labels, valence, arousalWild setting
IMPA-FACE3D[14]neutral frontal, joy, sadness, surprise, anger, disgust, fear, opened, closed, kiss, left side, right side, neutral sagittal left, neutral sagittal right, nape and forehead (acquired sometimes)38534 static imagesColor640X480Emotion labelsPosed
FEI Face Databaseneutral,smile2002800 static imagesColor640X480Emotion labelsPosed
Aff-Wild[1][15][16]200~1,250,000 manually annotatedColorVarious (average = 640x360)Valence, ArousalIn-the-Wild setting

References[edit]

Paul Ekman Torrent Pdf Finder
  1. ^'collection of emotional databases'. Archived from the original on 2018-03-25.
  2. ^'facial expression databases'.
  3. ^Livingstone & Russo (2018). The Ryerson Audio-Visual Database ofEmotional Speech and Song (RAVDESS): A dynamic, multimodal set of facial and vocal expressions in North American English. doi:10.1371/journal.pone.0196391
  4. ^P. Lucey, J. F. Cohn, T. Kanade, J. Saragih, Z. Ambadar and I. Matthews, 'The Extended Cohn-Kanade Dataset (CK+): A complete facial expression dataset for action unit and emotion-specified expression,' in 3rd IEEE Workshop on CVPR for Human Communicative Behavior Analysis, 2010
  5. ^Lyons, Michael; Kamachi, Miyuki; Gyoba, Jiro (1998). The Japanese Female Facial Expression (JAFFE) Database. doi:10.5281/zenodo.3451524.
  6. ^M. Valstar and M. Pantic, 'Induced disgust, happiness and surprise: an addition to the MMI facial expression database,' in Proc. Int. Conf. Language Resources and Evaluation, 2010
  7. ^I. Sneddon, M. McRorie, G. McKeown and J. Hanratty, 'The Belfast induced natural emotion database,' IEEE Trans. Affective Computing, vol. 3, no. 1, pp. 32-41, 2012
  8. ^S. M. Mavadati, M. H. Mahoor, K. Bartlett, P. Trinh and J. Cohn., 'DISFA: A Spontaneous Facial Action Intensity Database,' IEEE Trans. Affective Computing, vol. 4, no. 2, pp. 151–160, 2013
  9. ^N. Aifanti, C. Papachristou and A. Delopoulos, The MUG Facial Expression Database, in Proc. 11th Int. Workshop on Image Analysis for Multimedia Interactive Services (WIAMIS), Desenzano, Italy, April 12–14, 2010.
  10. ^S L Happy, P. Patnaik, A. Routray, and R. Guha, “The Indian Spontaneous Expression Database for Emotion Recognition,” in IEEE Transactions on Affective Computing, 2016, doi:10.1109/TAFFC.2015.2498174.
  11. ^Langner, O., Dotsch, R., Bijlstra, G., Wigboldus, D.H.J., Hawk, S.T., & van Knippenberg, A. (2010). Presentation and validation of the Radboud Faces Database. Cognition & Emotion, 24(8), 1377—1388. doi:10.1080/02699930903485076
  12. ^'Facial Expression Research Group Database (FERG-DB)'. grail.cs.washington.edu. Retrieved 2016-12-06.
  13. ^Mollahosseini, A.; Hasani, B.; Mahoor, M. H. (2017). 'AffectNet: A Database for Facial Expression, Valence, and Arousal Computing in the Wild'. IEEE Transactions on Affective Computing. PP (99): 18–31. arXiv:1708.03985. doi:10.1109/TAFFC.2017.2740923. ISSN1949-3045.
  14. ^'IMPA-FACE3D Technical Reports'. visgraf.impa.br. Retrieved 2018-03-08.
  15. ^Zafeiriou, S.; Kollias, D.; Nicolaou, M.A.; Papaioannou, A.; Zhao, G.; Kotsia, I. (2017). 'Aff-Wild: Valence and Arousal in-the-wild Challenge'(PDF). Computer Vision and Pattern Recognition Workshops (CVPRW), 2017.
  16. ^Kollias, D.; Tzirakis, P.; Nicolaou, M.A.; Papaioannou, A.; Zhao, G.; Schuller, B.; Kotsia, I.; Zafeiriou, S. (2019). 'Deep Affect Prediction in-the-wild: Aff-Wild Database and Challenge, Deep Architectures, and Beyond'. International Journal of Computer Vision (IJCV), 2019.
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