Compression of Fully-Connected Layer inNeural Network by Kronecker Product 又是一篇压缩网络文章,但没有给出在imagenet上的错误率变化,有待观测. Building a Large-scale Multimodal KnowledgeBase for Visual Question Answering 李飞飞视觉QA KB示意图 系统流程图 Bottom-up and top-down reasoning withc
作者: 寒小阳 && 龙心尘 时间:2016年3月. 出处:http://blog.csdn.net/han_xiaoyang/article/details/50856583 http://blog.csdn.net/longxinchen_ml/article/details/50903658 声明:版权所有,转载请联系作者并注明出处 1.重点内容引言 本系统是基于CVPR2015的论文<Deep Learning of Binary Hash Codes for Fast Im
Multi-pathConvolutional Neural Network for Complex Image Classification Suppresshigh frequency components with Bilateral filter in the second path ParseNet:Looking Wider to See Better code:https: //github.com/weiliu89/caffe/tree/fcn SEMANTICIMAGE SEG
arXiv is an e-print service in the fields of physics, mathematics, computer science, quantitative biology, quantitative finance and statistics. There'll be lots of papers in advance. Here's some recent papers which is important or interesting. 1. Obj
A Neural Network Approach to Context-Sensitive Generation of Conversational Responses Leverage Financial News to Predict Stock Price Movements Using Word Embeddings and Deep Neural Networks MatchNet: Unifying Feature and Metric Learning for Patch-Bas
Natural Neural Networks Google DeepMind又一神作 Projected Natural Gradient Descent algorithm (PRONG) better than SGD as evidenced by the boost in performance offered by batch normalization (BN) Deep Convolutional Matching DEEP-PLANT: PLANT IDENTIFICATION
Image Representations and New Domains inNeural Image Captioning we find that a state-of-theart neuralcaptioning algorithm is able to produce quality captions even when providedwith surprisingly poor image representations Deep Boosting: Joint Feature
这一期的神作论文有蛮多的,都非常有意思. Feature Representation In ConvolutionalNeural Networks 该论文中论述了在某种CNN结构下,是否有准确率较高的off model的分类方法(这里是指非softmax)能达到更有效的分类结果呢? 论文给出了肯定的答案. 该论文还给出了各层特征重要性的图表,蛮有意思的 该论文还交代了实验中用到的开源代码. Towards Good Practices for Very DeepTwo-Stream Conv
Convolutional Color Constancy can this be used for training cnn to narrow the gap between different lighting conditions? Describing Multimedia Content using Attention-based Encoder–Decoder Networks lots of machine translation, speech recognition, ima