229 research outputs found
Deep Learning Face Representation by Joint Identification-Verification
The key challenge of face recognition is to develop effective feature
representations for reducing intra-personal variations while enlarging
inter-personal differences. In this paper, we show that it can be well solved
with deep learning and using both face identification and verification signals
as supervision. The Deep IDentification-verification features (DeepID2) are
learned with carefully designed deep convolutional networks. The face
identification task increases the inter-personal variations by drawing DeepID2
extracted from different identities apart, while the face verification task
reduces the intra-personal variations by pulling DeepID2 extracted from the
same identity together, both of which are essential to face recognition. The
learned DeepID2 features can be well generalized to new identities unseen in
the training data. On the challenging LFW dataset, 99.15% face verification
accuracy is achieved. Compared with the best deep learning result on LFW, the
error rate has been significantly reduced by 67%
Dominant run-length method for image classification
In this paper, we develop a new run-length texture feature extraction algorithm that significantly improves image
classification accuracy over traditional techniques. By directly using part or all of the run-length matrix as a feature vector,
much of the texture information is preserved. This approach is made possible by the introduction of a new multi-level
dominant eigenvector estimation algorithm. It reduces the computational complexity of the Karhunen-Loeve Transform by
several orders of magnitude. Combined with the Bhattacharya distance measure, they form an efficient feature selection
algorithm. The advantage of this approach is demonstrated experimentally by the classification of two independent texture
data sets. Perfect classification is achieved on the first data set of eight Brodatz textures. The 97% classification accuracy
on the second data set of sixteen Vistex images further confirms the effectiveness of the algorithm. Based on the
observation that most texture information is contained in the first few columns of the run-length matrix, especially in the
first column, we develop a new fast, parallel run-length matrix computation scheme. Comparisons with the co-occurrence
and wavelet methods demonstrate that the run-length matrices contain great discriminatory information and that a method
of extracting such information is of paramount importance to successful classification.Funding was provided by the Office of Naval Research through
Contract No. N00014-93-1-0602
Aesthetic-Driven Image Enhancement by Adversarial Learning
We introduce EnhanceGAN, an adversarial learning based model that performs
automatic image enhancement. Traditional image enhancement frameworks typically
involve training models in a fully-supervised manner, which require expensive
annotations in the form of aligned image pairs. In contrast to these
approaches, our proposed EnhanceGAN only requires weak supervision (binary
labels on image aesthetic quality) and is able to learn enhancement operators
for the task of aesthetic-based image enhancement. In particular, we show the
effectiveness of a piecewise color enhancement module trained with weak
supervision, and extend the proposed EnhanceGAN framework to learning a deep
filtering-based aesthetic enhancer. The full differentiability of our image
enhancement operators enables the training of EnhanceGAN in an end-to-end
manner. We further demonstrate the capability of EnhanceGAN in learning
aesthetic-based image cropping without any groundtruth cropping pairs. Our
weakly-supervised EnhanceGAN reports competitive quantitative results on
aesthetic-based color enhancement as well as automatic image cropping, and a
user study confirms that our image enhancement results are on par with or even
preferred over professional enhancement
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