In this paper, we propose a sparse coding approach to background modeling. The obtained model is based on dictionaries which we learn and keep up to date as new data are provided by a video camera. We observe that, without dynamic events, video frames may be seen as noisy data belonging to the background. Over time, such background is subject...
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2015 (v1)PublicationUploaded on: April 14, 2023
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2013 (v1)Publication
In this work we build a model of the background based on dictionary learning. The image is divided into patches of equal size and a background model is obtained as a sparse linear combination of patch prototypes learnt from the image stream and updated when necessary to take into account stable variations. By enforcing sparsity, the obtained...
Uploaded on: April 14, 2023 -
2016 (v1)Publication
We present a computational model and a system for the automated recognition of emotions starting from full-body movement. Three-dimensional motion data of full-body movements are obtained either from professional optical motion-capture systems (Qualisys) or from low-cost RGB-D sensors (Kinect and Kinect2). A number of features are then...
Uploaded on: April 14, 2023 -
2014 (v1)Publication
This is a short description of the Emotional Charades serious game demo. Our goal is to focus on emotion expression through body gestures, making the players aware of the amount of affective information their bodies convey. The whole framework aims at helping children with autism to understand and express emotions. We also want to compare the...
Uploaded on: March 27, 2023 -
2015 (v1)Publication
In this paper we evaluate our method for Background Modeling Through Dictionary Learning (BMTDL) and sparse coding on the recently proposed Scene Background Initialization (SBI) dataset. The BMTDL, originally proposed in [1] for the specific purpose of detecting the foreground of a scene, leverages on the availability of long time observations,...
Uploaded on: April 14, 2023