1) Estimation of soft biometrics from still images
At first, the principle of privileged information was investigated where we proposed a new machine learning method that couples privileged information and conditional random fields [P1, P7]. Then, we proposed a novel method, which performs gender (binary) classification using ratios of anthropometric measurements using the LUPI paradigm [P2, P3]. Using the actual values of anthropometric measurements (e.g. limb lengths in mm) from an anthropometric database results in good gender classification accuracy. We argue though, that such information cannot be accurately obtained from state-of-the-art computer vision algorithms without employing depth information (e.g. use data obtained from a Kinect RGB-D sensor). To address this limitation, we proposed to exploit the use of ratios of anthropometric measurements. Hence, errors in the estimation of the actual values would be alleviated.
2) Human identification by classification of visual attributes
We introduced a method to address the problem of visual attribute classification from images of standing humans [P5, P6]. Instead of using low-level representations, which would require extracting hand crafted features, we proposed a deep learning method to solve multiple binary classification tasks.
The groups of tasks are learned in a curriculum learning scenario, starting with the one with the highest within group cross-correlation and moving to the less correlated ones by transferring knowledge from the former to the latter. The tasks in each group are learned in a typical multi-task classification setup. We have also developed an effective method to obtain the groups of tasks using hierarchical agglomerative clustering, which can be of any number and not just two groups (strongly/weakly correlated).
Publications
[P1] M. Vrigkas, C. Nikou and I. Kakadiaris. Exploiting privileged information for facial expression recognition. IAPR/IEEE International Conference on Biometrics (ICB’16), 13-16 June 2016, Halmstad, Sweden.
[P2] Kakadiaris, N. Sarafianos and C. Nikou. Show me your body: gender classification from still images. IEEE International Conference on Image Processing (ICIP’16), 25-28 September 2016, Phoenix, Arizona, USA.
[P3] N. Sarafianos, C. Nikou, and I. Kakadiaris. Predicting privileged information for height estimation. 23rd International Conference on Pattern Recognition (ICPR’16), 4-8 December 2016, Cancún, Mexico.
[P4] M. Vrigkas, E. Kazakos, C. Nikou and I.A. Kakadiaris. Inferring human activities using robust privileged probabilistic learning. 4th Workshop on Transferring and Adapting Source Knowledge in Computer Vision (TASK-CV), in conjunction with the International Conference on Computer Vision (ICCV'17), Venice, Italy, October 22-29 2017.
[P5] N. Sarafianos, Th. Giannakopoulos, C. Nikou and I. Kakadiaris. Curriculum learning for multi-task classification of visual attributes. 4th Workshop on Transferring and Adapting Source Knowledge in Computer Vision (TASK-CV), in conjunction with the International Conference on Computer Vision (ICCV'17), Venice, Italy, October 22-29 2017.
[P6] N. Sarafianos, Th. Giannakopoulos, C. Nikou and I. Kakadiaris. Curriculum learning of visual attributes clusters for multi-task classification.
https://arxiv.org/abs/1709.06664(s’ouvre dans une nouvelle fenêtre)[P7] M. Vrigkas, E. Kazakos, C. Nikou and I. Kakadiaris. Human activity recognition using robust adaptive privileged probabilistic learning.
https://arxiv.org/abs/1709.06447(s’ouvre dans une nouvelle fenêtre)