DocumentCode :
248210
Title :
Detecting self-stimulatory behaviours for autism diagnosis
Author :
Rajagopalan, Shyam Sundar ; Goecke, Roland
Author_Institution :
HCC Lab., Univ. of Canberra, Canberra, ACT, Australia
fYear :
2014
fDate :
27-30 Oct. 2014
Firstpage :
1470
Lastpage :
1474
Abstract :
Autism Spectrum Disorders (ASD), often referred to as autism, are neurological disorders characterised by deficits in cognitive skills, social and communicative behaviours. A common way of diagnosing ASD is by studying behavioural cues expressed by the children. An algorithm for detecting three types of self-stimulatory behaviours from publicly available unconstrained videos is proposed here. The child´s body is tracked in the video by a careful selection of poselet bounding box predictions using a nearest neighbour algorithm. A global motion descriptor - Histogram of Dominant Motions (HDM) - is computed using the dominant motion flow in the detected body regions. The motion model built using this descriptor is used for detecting the self-stimulatory behaviours. Experiments conducted on the recently released unconstrained SSBD video dataset show significant improvement in detection accuracy over the baseline approach. The robustness of the method is validated using benchmark action recognition datasets. The proposed poselet bounding box selection algorithm is validated against the ground truth annotation data provided with the UCF101 dataset.
Keywords :
biomedical optical imaging; cognition; image sensors; image sequences; medical disorders; medical image processing; neurophysiology; paediatrics; video signal processing; UCF101 dataset; autism diagnosis; autism spectrum disorders; baseline approach; behavioural cues; benchmark action recognition datasets; children; cognitive skills; communicative behaviours; detected body regions; detection accuracy; dominant motion flow; global motion descriptor; ground truth annotation data; histogram-of-dominant motions; nearest neighbour algorithm; neurological disorders; poselet bounding box predictions; poselet bounding box selection algorithm; publicly available unconstrained videos; self-stimulatory behaviour detection; social behaviours; unconstrained SSBD video dataset; Autism; Body regions; Computer vision; Integrated optics; Tracking; Variable speed drives; Videos; Computaional behaviour analysis; autism; histogram of dominant motions; poselets; stimming;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Image Processing (ICIP), 2014 IEEE International Conference on
Conference_Location :
Paris
Type :
conf
DOI :
10.1109/ICIP.2014.7025294
Filename :
7025294
Link To Document :
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