A residual-networks family with hundreds or even thousands of layers
dominates major image recognition tasks, but building a network by simply
stacking residual blocks inevitably limits its optimization ability. This paper
proposes a novel residual-network architecture, Residual networks of Residual
networks (RoR), to dig the optimization ability of residual networks. RoR
substitutes optimizing residual mapping of residual mapping for optimizing
original residual mapping. In particular, RoR adds level-wise shortcut
connections upon original residual networks to promote the learning capability
of residual networks. More importantly, RoR can be applied to various kinds of
residual networks (ResNets, Pre-ResNets and WRN) and significantly boost their
performance. Our experiments demonstrate the effectiveness and versatility of
RoR, where it achieves the best performance in all residual-network-like
structures. Our RoR-3-WRN58-4+SD models achieve new state-of-the-art results on
CIFAR-10, CIFAR-100 and SVHN, with test errors 3.77%, 19.73% and 1.59%,
respectively. RoR-3 models also achieve state-of-the-art results compared to
ResNets on ImageNet data set.Comment: IEEE Transactions on Circuits and Systems for Video Technology 201
With the development of next generation sequencing techniques, it is fast and cheap to determine protein sequences but relatively slow and expensive to extract useful information from protein sequences because of limitations of traditional biological experimental techniques. Protein function prediction has been a long standing challenge to fill the gap between the huge amount of protein sequences and the known function. In this paper, we propose a novel method to convert the protein function problem into a language translation problem by the new proposed protein sequence language “ProLan” to the protein function language “GOLan”, and build a neural machine translation model based on recurrent neural networks to translate “ProLan” language to “GOLan” language. We blindly tested our method by attending the latest third Critical Assessment of Function Annotation (CAFA 3) in 2016, and also evaluate the performance of our methods on selected proteins whose function was released after CAFA competition. The good performance on the training and testing datasets demonstrates that our new proposed method is a promising direction for protein function prediction. In summary, we first time propose a method which converts the protein function prediction problem to a language translation problem and applies a neural machine translation model for protein function prediction.
Automatically predicting age group and gender from face images acquired in unconstrained conditions is an important and challenging task in many real-world applications. Nevertheless, the conventional methods with manually-designed features on in-the-wild benchmarks are unsatisfactory because of incompetency to tackle large variations in unconstrained images. This difficulty is alleviated to some degree through Convolutional Neural Networks (CNN) for its powerful feature representation. In this paper, we propose a new CNN based method for age group and gender estimation leveraging Residual Networks of Residual Networks (RoR), which exhibits better optimization ability for age group and gender classification than other CNN architectures. Moreover, two modest mechanisms based on observation of the characteristics of age group are presented to further improve the performance of age estimation. In order to further improve the performance and alleviate overfitting problem, RoR model is pre-trained on ImageNet firstly, and then it is fune-tuned on the IMDB-WIKI-101 data set for further learning the features of face images, finally, it is used to fine-tune on Adience data set. Our experiments illustrate the effectiveness of RoR method for age and gender estimation in the wild, where it achieves better performance than other CNN methods. Finally, the RoR-152+IMDB-WIKI-101 with two mechanisms achieves new state-of-the-art results on Adience benchmark.
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