In this work, concept of the fashion-MNIST images classification constructed on convolutional neural networks is discussed. Whereas, 28×28 grayscale images of 70,000 fashion products from 10 classes, with 7,000 images per category, are in the fashion-MNIST dataset. There are 60,000 images in the training set and 10,000 images in the evaluation set. The data has been initially pre-processed for resizing and reducing the noise. Then, this data is normalized for ensuring that all the data are on the same scale and this usually improves the performance. After normalizing the data, it is augmented where one image will be in three forms of output. The first output image is obtained by rotating the actual one; the second output image is obtained a...
Deep learning has recently been applied to scene labelling, object tracking, pose estimation, text d...
This research study focuses on pattern recognition using convolutional neural network. Deep neural n...
As online retail services proliferate and are pervasive in modern lives, applications for classifyin...
As the elderly population grows, there is a need for caregivers, which may become unsustainable for ...
Designing the appearance of clothing can effectively enhance its attractiveness and expand its marke...
In the last five years, deep learning methods and particularly Convolutional Neural Networks (CNNs) ...
Perkembangan teknologi sekarang ini berdampak pada banyak hal, salah satunya ialah pada bidang Fashi...
In the e-commerce industry, importing data from third party clothing brands require validation of th...
Identifying garments texture design automatically for recommending the fashion trends is important n...
In the last five years, deep learning methods and particularly Convolutional Neural Networks (CNNs) ...
In this work, we propose and address a new computer vision task, which we call fashion item detectio...
In recent years, the online selection of virtual clothing styles has been used to explore and expand...
Region Proposals with Convolutional Neural Network Features (RCNN), an object detection algorithm, h...
In this paper, we provide an idea about how to utilize the deep neural network with large scale soci...
Classifying clothing attributes in surveillance images can be useful in the forensic field, making i...
Deep learning has recently been applied to scene labelling, object tracking, pose estimation, text d...
This research study focuses on pattern recognition using convolutional neural network. Deep neural n...
As online retail services proliferate and are pervasive in modern lives, applications for classifyin...
As the elderly population grows, there is a need for caregivers, which may become unsustainable for ...
Designing the appearance of clothing can effectively enhance its attractiveness and expand its marke...
In the last five years, deep learning methods and particularly Convolutional Neural Networks (CNNs) ...
Perkembangan teknologi sekarang ini berdampak pada banyak hal, salah satunya ialah pada bidang Fashi...
In the e-commerce industry, importing data from third party clothing brands require validation of th...
Identifying garments texture design automatically for recommending the fashion trends is important n...
In the last five years, deep learning methods and particularly Convolutional Neural Networks (CNNs) ...
In this work, we propose and address a new computer vision task, which we call fashion item detectio...
In recent years, the online selection of virtual clothing styles has been used to explore and expand...
Region Proposals with Convolutional Neural Network Features (RCNN), an object detection algorithm, h...
In this paper, we provide an idea about how to utilize the deep neural network with large scale soci...
Classifying clothing attributes in surveillance images can be useful in the forensic field, making i...
Deep learning has recently been applied to scene labelling, object tracking, pose estimation, text d...
This research study focuses on pattern recognition using convolutional neural network. Deep neural n...
As online retail services proliferate and are pervasive in modern lives, applications for classifyin...