convolution

VDSR-Accurate Image Super-Resolution Using Very Deep Convolutional Networks阅读笔记

Accurate Image Super-Resolution Using Very Deep Convolutional Networks(VDSR)阅读笔记(22.10.07)使用深度卷积网络的精确图像超分辨率 摘要:使用一个非常深的卷积神经网络,灵感来源于VGG-Net。本文发现,网络深度增加 ......

Position-Enhanced and Time-aware Graph Convolutional Network for Sequential Recommendations

# Position-Enhanced and Time-aware Graph Convolutional Network for Sequential Recommendations [TOC] > [Huang L., Ma Y., Liu Y., Du B., Wang S. and Li ......

astropy.convolution

chatgpt的解释: The text is explaining two different methods for convolving data: convolve() and convolve_fft(). Convolve() is a direct convolution algori ......
convolution astropy

SocialLGN Light graph convolution network for social recommendation

[TOC] > [Liao J., Zhou W., Luo F., Wen J., Gao M., Li X. and Zeng J. SocialLGN: Light graph convolution network for social recommendation. Information ......

《Zero Stability Well Predicts Performance of Convolutional Neural Networks》

# 《Zero Stability Well Predicts Performance of Convolutional Neural Networks》 ## 文章结构1. 摘要2. 引言3. 预备知识4. 来自现存CNNs的观察5. 零稳定性网络ZeroSNet6. 实验-- 通过零稳定预测性能 ......

Convolutional neural network (CNN)–extreme learning machine (ELM)

1. 介绍 论文:(2020)Neural networks for facial age estimation: a survey on recent advances. 地址: http://link.springer.com/article/10.1007/s10462-019-09765-w ......

HS-GCN Hamming Spatial Graph Convolutional Networks for Recommendation

[TOC] > [Liu H., Wei Y., Yin J. and Nie L. HS-GCN: Hamming spatial graph convolutional networks for recommendation. IEEE TKDE.](https://arxiv.org/pdf/ ......

Windows使用PyTorch遇到RuntimeError: Unable to find a valid cuDNN algorithm to run convolution的解决方案

Windows使用PyTorch遇到RuntimeError: Unable to find a valid cuDNN algorithm to run convolution的解决方案 PyTorch在Windows上的cuDNN实现有问题才会导致这个错误,解决方法是禁用cuDNN滚回旧实现上 ......

【论文阅读】Pyramid Vision Transformer: A Versatile Backbone for Dense Prediction without Convolutions

来自ICCV2021 论文地址:[2102.12122] Pyramid Vision Transformer: A Versatile Backbone for Dense Prediction without Convolutions (arxiv.org) 代码地址:https://link. ......

3.1 卷积神经网路 (Convolutional Neural Networks, CNN)

# 1. 概念引入: Image Classification 我们做图像分类时,一般分为三步: * 所有图片都先 rescale 成大小一样 * 把每一个类别表示成一个 one-hot vector(dimension 的长度决定模型可以辨识出多少不同种类的东西) * 将图片输入到模型中 ![im ......
卷积 Convolutional 网路 Networks 神经

【论文阅读】Pyramid Vision Transformer:A Versatile Backbone for Dense Prediction Without Convolutions

> # 🚩前言 > > - 🐳博客主页:😚[睡晚不猿序程](https://www.cnblogs.com/whp135/)😚 > - ⌚首发时间:2023.6.11 > - ⏰最近更新时间:2023.6.11 > - 🙆本文由 **睡晚不猿序程** 原创 > - 🤡作者是蒻蒟本蒟,如果 ......

【论文阅读】CvT:Introducing Convolutions to Vision Transformers

> # 🚩前言 > > - 🐳博客主页:😚[睡晚不猿序程](https://www.cnblogs.com/whp135/)😚 > - ⌚首发时间: > - ⏰最近更新时间: > - 🙆本文由 **睡晚不猿序程** 原创 > - 🤡作者是蒻蒟本蒟,如果文章里有任何错误或者表述不清,请 t ......

Self-Supervised Hypergraph Convolutional Networks for Session-based Recommendation

[TOC] > [Xia X., Yin H., Yu J., Wang Q., Cui L and Zhang X. Self-supervised hypergraph convolutional networks for session-based recommendation. AAAI, ......

Understanding Structural Vulnerability in Graph Convolutional Networks

Chen L., Li J., Peng Q., Liu Y., Zheng Z. and Yang C. Understanding structural vulnerability in graph convolutional networks. IJCAI, 2021. 概 mean 是在 G ......

Personalized Top-N Sequential Recommendation via Convolutional Sequence Embedding

Tang J. and Wang K. Personalized top-n sequential recommendation via convolutional sequence embedding. WSDM, 2018. 概 序列推荐的经典之作, 将卷积用在序列推荐之上. 符号说明 $\ma ......

Graph Convolutional Networks with EigenPooling

Ma Y., Wang S., Aggarwal C. C. and Tang J. Graph convolutional networks with eigenpooling. KDD, 2019. 概 本文提出了一种新的框架, 在前向的过程中, 可以逐步将相似的 nodes 和他们的特征聚合在 ......

阅读文献《DCRNet:Dilated Convolution based CSI Feedback Compression for Massive MIMO Systems》

这篇文章的作者是广州大学的范立生老师和他的学生汤舜璞,于2022年10月发表在 IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY。 文献提出了一种基于**空洞卷积(Dilated Convolution)**的CSI反馈网络,即空洞信道重建网络(Dilated Ch ......

Cluster-GCN An Efficient Algorithm for Training Deep Convolution Networks

Chiang W., Liu X., Si S., Li Y., Bengio S. and Hsieh C. Cluster-GCN: An efficient algorithm for training deep and large graph convolutional networks. ......

Spatiotemporal Remote Sensing Image Fusion Using Multiscale Two-Stream Convolutional Neural Networks

Spatiotemporal Remote Sensing Image Fusion Using Multiscale Two-Stream Convolutional Neural Networks abstract 地表反射率图像的渐变和突变是现有STF方法的主要挑战。(Gradual and ......

Layer-Dependent Importance Sampling for Training Deep and Large Graph Convolutional Networks

Zou D., Hu Z., Wang Y., Jiang S., Sun Y. and Gu Q. Layer-dependent importance sampling for training deep and large graph convolutional networks. NIPS, ......

Multi-View Attribute Graph Convolution Networks for Clustering

论文阅读04-Multi-View Attribute Graph Convolution Networks for Clustering:MAGCN 论文信息 论文地址:Multi-View Attribute Graph Convolution Networks for Clustering | ......

FastGCN Fast Learning with Graph Convolutional Networks via Importance Sampling

Chen J., Ma T. and Xiao C. FastGCN: fast learning with graph convolutional networks via importance sampling. ICLR, 2018. 概 一般的 GCN 每层通常需要经过所有的结点的 prop ......

Deeper Insights into Graph Convolutional Networks for Semi-Supervised Learning

Li Q., Han Z. and Wu X. Deeper insights into graph convolutional networks for semi-supervised learning. AAAI, 2018. 概 本文分析了 GCN 的实际上就是一种 Smoothing, 但是 ......

Stochastic Training of Graph Convolutional Networks with Variance Reduction

Chen J., Zhu J. and Song L. Stochastic training of graph convolutional networks with variance reduction. ICML, 2018. 概 我们都知道, GCN 虽然形式简单, 但是对于结点个数非常多的 ......

Spatial Information Guided Convolution for Real-Time RGBD Semantic Segmentation(阅读笔记)

空间信息引导卷积的实时RGBD语义分割(阅读笔记) 论文:Spatial Information Guided Convolution for Real-Time RGBD Semantic Segmentation 复现:https://github.com/LinZhuoChen/SGNet(还 ......

卷积神经网络(Convolutional Neural Network)

前置芝士: 神经网络 #前言 人脑视觉机理,是指视觉系统的信息处理在可视皮层是分级的,大脑的工作过程是一个不断迭代、不断抽象的过程。视网膜在得到原始信息后,首先经由区域V1初步处理得到边缘和方向特征信息,其次经由区域V2的进一步抽象得到轮廓和形状特征信息,如此迭代地经由更多更高层的抽象最后得到更为精 ......

论文翻译:2022_DNS_1th:Multi-scale temporal frequency convolutional network with axial attention for speech enhancement

论文地址:带轴向注意的多尺度时域频率卷积网络语音增强 论文代码:https://github.com/echocatzh/MTFAA-Net 引用:Zhang G, Yu L, Wang C, et al. Multi-scale temporal frequency convolutional n ......
共58篇  :2/2页 首页上一页2下一页尾页