60,919 research outputs found
Face Detection with Effective Feature Extraction
There is an abundant literature on face detection due to its important role
in many vision applications. Since Viola and Jones proposed the first real-time
AdaBoost based face detector, Haar-like features have been adopted as the
method of choice for frontal face detection. In this work, we show that simple
features other than Haar-like features can also be applied for training an
effective face detector. Since, single feature is not discriminative enough to
separate faces from difficult non-faces, we further improve the generalization
performance of our simple features by introducing feature co-occurrences. We
demonstrate that our proposed features yield a performance improvement compared
to Haar-like features. In addition, our findings indicate that features play a
crucial role in the ability of the system to generalize.Comment: 7 pages. Conference version published in Asian Conf. Comp. Vision
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Facial emotion recognition using min-max similarity classifier
Recognition of human emotions from the imaging templates is useful in a wide
variety of human-computer interaction and intelligent systems applications.
However, the automatic recognition of facial expressions using image template
matching techniques suffer from the natural variability with facial features
and recording conditions. In spite of the progress achieved in facial emotion
recognition in recent years, the effective and computationally simple feature
selection and classification technique for emotion recognition is still an open
problem. In this paper, we propose an efficient and straightforward facial
emotion recognition algorithm to reduce the problem of inter-class pixel
mismatch during classification. The proposed method includes the application of
pixel normalization to remove intensity offsets followed-up with a Min-Max
metric in a nearest neighbor classifier that is capable of suppressing feature
outliers. The results indicate an improvement of recognition performance from
92.85% to 98.57% for the proposed Min-Max classification method when tested on
JAFFE database. The proposed emotion recognition technique outperforms the
existing template matching methods
Facial Action Unit Detection Using Attention and Relation Learning
Attention mechanism has recently attracted increasing attentions in the field
of facial action unit (AU) detection. By finding the region of interest of each
AU with the attention mechanism, AU-related local features can be captured.
Most of the existing attention based AU detection works use prior knowledge to
predefine fixed attentions or refine the predefined attentions within a small
range, which limits their capacity to model various AUs. In this paper, we
propose an end-to-end deep learning based attention and relation learning
framework for AU detection with only AU labels, which has not been explored
before. In particular, multi-scale features shared by each AU are learned
firstly, and then both channel-wise and spatial attentions are adaptively
learned to select and extract AU-related local features. Moreover, pixel-level
relations for AUs are further captured to refine spatial attentions so as to
extract more relevant local features. Without changing the network
architecture, our framework can be easily extended for AU intensity estimation.
Extensive experiments show that our framework (i) soundly outperforms the
state-of-the-art methods for both AU detection and AU intensity estimation on
the challenging BP4D, DISFA, FERA 2015 and BP4D+ benchmarks, (ii) can
adaptively capture the correlated regions of each AU, and (iii) also works well
under severe occlusions and large poses.Comment: This paper is accepted by IEEE Transactions on Affective Computin
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