发明授权
US09536293B2 Image assessment using deep convolutional neural networks 有权
使用深卷积神经网络的图像评估

Image assessment using deep convolutional neural networks
摘要:
Deep convolutional neural networks receive local and global representations of images as inputs and learn the best representation for a particular feature through multiple convolutional and fully connected layers. A double-column neural network structure receives each of the local and global representations as two heterogeneous parallel inputs to the two columns. After some layers of transformations, the two columns are merged to form the final classifier. Additionally, features may be learned in one of the fully connected layers. The features of the images may be leveraged to boost classification accuracy of other features by learning a regularized double-column neural network.
公开/授权文献
信息查询
0/0