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deep convolutional neural Network (DCNN)

Face Authentication Using Efficient Deep Convolutional Neural Network

Face Authentication Using Efficient Deep Convolutional Neural Network

... efficient deep Convolutional Neural network (CNN) is proposed to be used for face ...using deep convolutional neural ...efficient deep learning model is proposed to ...

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Automatic diagnosis of imbalanced ophthalmic images using a cost-sensitive deep convolutional neural network

Automatic diagnosis of imbalanced ophthalmic images using a cost-sensitive deep convolutional neural network

... Meanwhile, deep convolutional neural network (CNN) models have demon- strated extraordinary performance in medical image recognition tasks ...representative deep learning CNN ...

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Garments Texture Design Class Identification Using Deep Convolutional Neural Network

Garments Texture Design Class Identification Using Deep Convolutional Neural Network

... Garments Texture Design Class Identification Using Deep Convolutional Neural Network.. S.M.[r] ...

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Recognition of Brahmi words by Using Deep Convolutional Neural Network

Recognition of Brahmi words by Using Deep Convolutional Neural Network

... CNN with dropout and Gabor filter 92.47% This study is considered the learning rate, the number of hidden neurons, and the batch size as parameters to train the CNN which have four convolutional layers. According ...

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A Deep Convolutional Neural Network Based Lung Disorder Diagnosis

A Deep Convolutional Neural Network Based Lung Disorder Diagnosis

... [25]. Gao, M., Bagci, U., Lu, L., Wu, A., Buty, M., Shin, H. C., & Xu, Z., Holistic Classification of CT Attenuation Patterns for Interstitial Lung Diseases via Deep Convolutional Neural ...

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Non Linear Text Regression with a Deep Convolutional Neural Network

Non Linear Text Regression with a Deep Convolutional Neural Network

... a convolutional network with max-pooling to represent documents in terms of n-grams, and several fully connected hidden lay- ers to allow for learning of complex non-linear in- ...

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Weighted Channel Dropout for Regularization of Deep Convolutional Neural Network

Weighted Channel Dropout for Regularization of Deep Convolutional Neural Network

... Another inspiration of this work comes from the ob- servation that in the stack of convolutional layers within CNN, all the channels generated by the previous layer are treated equally for the next layer. This is ...

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Deep Convolution Neural Networks for Automatic Eyeglasses Removal

Deep Convolution Neural Networks for Automatic Eyeglasses Removal

... The paper presents the automatic eyeglasses removal based on deep convolutional neural network (DCNN). Our DCNN removes the eyeglasses region and reconstructs this region by selecting one ...

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Automatic Plastic Waste Segregation And Sorting Using Deep Learning Model

Automatic Plastic Waste Segregation And Sorting Using Deep Learning Model

... weakly-supervised deep learning approach (DCNN-GPC) for detection and recognition of nuclear waste ...on deep learning and also able to detect and categorize unknown waste ...of Deep ...

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Blind Navigation System using Artificial Intelligence

Blind Navigation System using Artificial Intelligence

... artificial neural networks (SIANN), due to their shared-weight architecture and translation invariance ...The deep convolutional neural network can achieve reasonable performance on ...

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Automated Detection of Gender from Face Images

Automated Detection of Gender from Face Images

... known as fine grained ethnicity. According to earlier results, the prediction of the fine-grained ethnicity of an individual is the most challenging task, followed by age and lastly gender. A. Dehghan et al. [7] ...

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Fine Grained Classification of Product Images Based on Convolutional Neural Networks

Fine Grained Classification of Product Images Based on Convolutional Neural Networks

... a deep convolutional neural network that the convolution kernel size and the order of network connection are based on the high efficiency of the filter capacity and cover- ...of ...

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Face recognition with Bayesian convolutional networks for robust surveillance systems

Face recognition with Bayesian convolutional networks for robust surveillance systems

... 2.2 Deep learning-based face recognition approaches Although machine learning techniques for facial recogni- tion have provided decent results, these techniques do not perform well under unconstrained ...hand, ...

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A CNN Based Approach for Garments Texture Design Classification

A CNN Based Approach for Garments Texture Design Classification

... well-known deep Convolutional Neural Network (CNN) models AlexNet and VGG_S in two different garment datasets for the purpose of training and ...

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Disease Detection in the Leaves of Multiple Plants

Disease Detection in the Leaves of Multiple Plants

... The deep algorithms can be made useful in plant disease ...a deep learning based method for the detection of diseases effected in the leaves of ...the deep Convolutional Neural ...

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MLVCNN: Multi-Loop-View Convolutional Neural Network for 3D Shape Retrieval

MLVCNN: Multi-Loop-View Convolutional Neural Network for 3D Shape Retrieval

... descriptors, deep learning models and ensemble ...In deep learning models, Multi-View CNN (MVCNN) (Su et ...and Deep Local feature Aggregation Network(DLAN) (Fu- ruya and Ohbuchi 2016) are ...

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Relation Classification via Convolutional Deep Neural Network

Relation Classification via Convolutional Deep Neural Network

... The idea of extracting features for NLP using convolutional DNN was previously explored by Col- lobert et al. (2011), in the context of POS tagging, chunking (CHUNK), Named Entity Recogni- tion (NER) and Semantic ...

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Deep Learning Based Visual Tracking: A Review

Deep Learning Based Visual Tracking: A Review

... Da Zhang, Hamid Maei, Xin Wang, and Yuan-Fang Wang presented the first neural-network tracker that combines convolutional and recurrent networks with RL algorithm in [12]. The tracker is capable of ...

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Three-dimensional convolutional restricted Boltzmann machine for human behavior recognition from RGB-D video

Three-dimensional convolutional restricted Boltzmann machine for human behavior recognition from RGB-D video

... three-dimensional convolutional restricted Boltzmann machine (3DCRBM) is proposed which can extract features from the raw RGB-D ...3D convolutional kernels can be applied to these four frames to extract ...

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Facial Keypoints Detection with Deep Learning

Facial Keypoints Detection with Deep Learning

... with deep convolutional neural ...deeper convolutional neural network such as the ResNet [6], and explore more image augmentation technique such as rotation and ...

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