8,620 research outputs found
LEARNet Dynamic Imaging Network for Micro Expression Recognition
Unlike prevalent facial expressions, micro expressions have subtle,
involuntary muscle movements which are short-lived in nature. These minute
muscle movements reflect true emotions of a person. Due to the short duration
and low intensity, these micro-expressions are very difficult to perceive and
interpret correctly. In this paper, we propose the dynamic representation of
micro-expressions to preserve facial movement information of a video in a
single frame. We also propose a Lateral Accretive Hybrid Network (LEARNet) to
capture micro-level features of an expression in the facial region. The LEARNet
refines the salient expression features in accretive manner by incorporating
accretion layers (AL) in the network. The response of the AL holds the hybrid
feature maps generated by prior laterally connected convolution layers.
Moreover, LEARNet architecture incorporates the cross decoupled relationship
between convolution layers which helps in preserving the tiny but influential
facial muscle change information. The visual responses of the proposed LEARNet
depict the effectiveness of the system by preserving both high- and micro-level
edge features of facial expression. The effectiveness of the proposed LEARNet
is evaluated on four benchmark datasets: CASME-I, CASME-II, CAS(ME)^2 and SMIC.
The experimental results after investigation show a significant improvement of
4.03%, 1.90%, 1.79% and 2.82% as compared with ResNet on CASME-I, CASME-II,
CAS(ME)^2 and SMIC datasets respectively.Comment: Dynamic imaging, accretion, lateral, micro expression recognitio
Wearing Many (Social) Hats: How Different are Your Different Social Network Personae?
This paper investigates when users create profiles in different social
networks, whether they are redundant expressions of the same persona, or they
are adapted to each platform. Using the personal webpages of 116,998 users on
About.me, we identify and extract matched user profiles on several major social
networks including Facebook, Twitter, LinkedIn, and Instagram. We find evidence
for distinct site-specific norms, such as differences in the language used in
the text of the profile self-description, and the kind of picture used as
profile image. By learning a model that robustly identifies the platform given
a user's profile image (0.657--0.829 AUC) or self-description (0.608--0.847
AUC), we confirm that users do adapt their behaviour to individual platforms in
an identifiable and learnable manner. However, different genders and age groups
adapt their behaviour differently from each other, and these differences are,
in general, consistent across different platforms. We show that differences in
social profile construction correspond to differences in how formal or informal
the platform is.Comment: Accepted at the 11th International AAAI Conference on Web and Social
Media (ICWSM17
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