segmentation generative gaussian semantic

RefineNet: Multi-path Refinement Networks for High-Resolution Semantic Segmentation

RefineNet: Multi-path Refinement Networks for High-Resolution Semantic Segmentation * Authors: [[Guosheng Lin]], [[Anton Milan]], [[Chunhua Shen]], [[ ......

Expectation-Maximization Attention Networks for Semantic Segmentation 使用了EM算法的注意力

Expectation-Maximization Attention Networks for Semantic Segmentation * Authors: [[Xia Li]], [[Zhisheng Zhong]], [[Jianlong Wu]], [[Yibo Yang]], [[Zho ......

UNetFormer: A UNet-like transformer for efficient semantic segmentation of remote sensing urban scene imagery

UNetFormer: A UNet-like transformer for efficient semantic segmentation of remote sensing urban scene imagery * Authors: [[Libo Wang]], [[Rui Li]], [[ ......

U-Net: Convolutional Networks for Biomedical Image Segmentation

U-Net: Convolutional Networks for Biomedical Image Segmentation * Authors: [[Olaf Ronneberger]], [[Philipp Fischer]], [[Thomas Brox]] Local library 初读 ......

SegViT: Semantic Segmentation with Plain Vision Transformers

SegViT: Semantic Segmentation with Plain Vision Transformers * Authors: [[Bowen Zhang]], [[Zhi Tian]], [[Quan Tang]], [[Xiangxiang Chu]], [[Xiaolin We ......

Asymmetric Non-Local Neural Networks for Semantic Segmentation 非对称注意力

Asymmetric Non-Local Neural Networks for Semantic Segmentation * Authors: [[Zhen Zhu]], [[Mengdu Xu]], [[Song Bai]], [[Tengteng Huang]], [[Xiang Bai]] ......

PIDNet: A Real-time Semantic Segmentation Network Inspired by PID Controllers

PIDNet: A Real-time Semantic Segmentation Network Inspired by PID Controllers * Authors: [[Jiacong Xu]], [[Zixiang Xiong]], [[Shankar P. Bhattacharyya ......

Context Prior for Scene Segmentation带上下文先验的分割

Context Prior for Scene Segmentation * Authors: [[Changqian Yu]], [[Jingbo Wang]], [[Changxin Gao]], [[Gang Yu]], [[Chunhua Shen]], [[Nong Sang]] DOI: ......
先验 下文 Segmentation Context Prior

UNet++: A Nested U-Net Architecture for Medical Image Segmentation

UNet++: A Nested U-Net Architecture for Medical Image Segmentation * Authors: [[Zongwei Zhou]], [[Md Mahfuzur Rahman Siddiquee]], [[Nima Tajbakhsh]], ......

A Deformable Attention Network for High-Resolution Remote Sensing Images Semantic Segmentation可变形注意力

A Deformable Attention Network for High-Resolution Remote Sensing Images Semantic Segmentation * Authors: [[Renxiang Zuo]], [[Guangyun Zhang]], [[Rong ......

Ansor:Generating High-Performance Tensor Program for Deep Learning

Ansor:Generating High-Performance Tensor Program for Deep Learning Abstract 高性能的张量程序对于保证深度神经网络的高效执行十分关键,但是在不同硬件平台上获取高性能的张量程序并不容易。近年的研究中,深度学习系统依赖硬件供应商提 ......

generative AI

Welcome to generative AI for everyone. Since the release of ChatGPT, AI specifically, generative AI has caught the attention of many individuals, corp ......
generative AI

Fully Attentional Network for Semantic Segmentation:FLANet

Fully Attentional Network for Semantic Segmentation * Authors: [[Qi Song]], [[Jie Li]], [[Chenghong Li]], [[Hao Guo]], [[Rui Huang]] 初读印象 comment:: (F ......

Segmentation Transformer: Object-Contextual Representations for Semantic Segmentation;OCRNet

Segmentation Transformer: Object-Contextual Representations for Semantic Segmentation * Authors: [[Yuhui Yuan]], [[Xiaokang Chen]], [[Xilin Chen]], [[ ......

Generative AI: Friend or Foe?

Generative AI: Friend or Foe? Introduction Artificial intelligence (AI) is rapidly changing the world around us, and the writing and publishing indust ......
Generative Friend Foe AI or

【Linux】调试常见的应用程序奔溃“Segmentation fault (core dumped)”

https://blog.csdn.net/hello_nofail/article/details/129994481?ops_request_misc=%257B%2522request%255Fid%2522%253A%2522170264661316800227454508%2522%252 ......

【论文阅读笔记】【多模态-Vision-Language Pretraining】 BLIP: Bootstrapping Language-Image Pre-training for Unified Vision-Language Understanding and Generation

BLIP ICML 2022 (Spotlight) 读论文思考的问题 论文试图解决什么问题?写作背景是什么? 问题: 在视觉-语言预训练(VLP)中,如何更加高效地利用充斥着噪声的海量图文对数据,提升预训练效果? 如何设计模型,使得预训练后的模型在理解(understanding-based)任务 ......

【论文阅读笔记】【OCR-文本识别】 SEED: Semantics Enhanced Encoder-Decoder Framework for Scene Text Recognition

SEED CVPR 2020 读论文思考的问题 论文试图解决什么问题?写作背景是什么? 问题: 如何利用全局的语义信息提高文本识别模型对低质量文本的鲁棒性和识别效果? 背景: 以往的基于 encoder-decoder 的文本识别方法通常基于局部的视觉特征解码出文本,忽略了对单词显式的全局语义信息的 ......

D. Jumping Through Segments

1、首先,假设我们已知一个k,若其符合题意,那么 第一次移动时可达区间为[-k,k],我们只需判断这个区间和[L1,R1]是否有交区间。然后我们取出这个交区间【left,right】。 接下每次移动,我们都在上一次得到的区间基础上得到新的可移动区间【left-k,right+k】,之后再和【Li,R ......
Segments Jumping Through

[ARC164E] Segment-Tree Optimization 题解

题目链接 题目链接 题目解法 一个自认为比较自然的解法 这种一段序列切成两部分的问题首先考虑区间 \(dp\) 令 \(f_{l,r}\) 为 \([l,r]\) 能构成的最小深度,\(g_{l,r}\) 为在 \(f_{l,r}\) 最小的情况下最少的最大深度的点的个数 转移枚举 \(k\) 即可 ......

D. Jumping Through Segments

题目传送门 我是彩笔 二分trigger:存在一个最小值,使得当大于最小值时一定成立,小于最小值时一定不成立 #include<bits/stdc++.h> using namespace std; int n; int l[200005]={0},r[200005]={0}; int ss(int ......
Segments Jumping Through

GMMSeg: Gaussian Mixture based Generative Semantic Segmentation Models

前置知识:【EM算法深度解析 - CSDN App】http://t.csdnimg.cn/r6TXM Motivation 目前的语义分割通常采用判别式分类器,然而这存在三个问题:这种方式仅仅学习了决策边界,而没有对数据分布进行建模;每个类仅学习一个向量,没有考虑到类内差异;OOD数据效果不好。生 ......

Class-Incremental Learning with Generative Classifiers(CVPR2021W)

前置知识:VAE(可以参考https://zhuanlan.zhihu.com/p/348498294) Motivation 之前的方法通常使用判别式分类器,对条件分布\(p(y|\textbf{x})\)进行建模(classifier+softmax+ce)。其问题在于分类器会偏向最新学的类别, ......

MemGPT中_generate_reply_for_user_message报错TypeError: cannot unpack non-iterable coroutine object

memgpt/autogen/memgpt_agent.py", line 230, in _generate_reply_for_user_message (TypeError: cannot unpack non-iterable coroutine object 解决 将memgpt/auto ......

论文阅读:2023_Semantic Hearing: Programming Acoustic Scenes with Binaural Hearables

论文地址:语义听觉:用双耳可听器编程声学场景 论文代码:https://semantichearing.cs.washington.edu/ 引用格式:Veluri B, Itani M, Chan J, et al. Semantic Hearing: Programming Acoustic S ......

《REBEL Relation Extraction By End-to-end Language generation》阅读笔记

论文来源 代码地址 相关视频(YouTube) 相关概念: 1.What is natural language understanding (NLU)? Natural language understanding (NLU) is a branch of artificial intellige ......

Generative-Contrastive Graph Learning for Recommendation论文阅读笔记

Abstract 首先介绍了一下GCL的一些缺点,GCL是通过数据增强来构造对比视图,然后通过最大化对比视图之间的互信息来提供自监督信号。但是目前的数据增强技术都有着一定的缺点 结构增强随机退出节点或边,容易破坏用户项目的内在本质 特征增强对每个节点施加相同的尺度噪声增强,忽略的节点的独特特征 所以 ......

乘风破浪,遇见生成式人工智能(Generative AI)洪流之初学者入门课程,十二章系列By微软云技术布道师团队

课程资源 https://github.com/microsoft/generative-ai-for-beginners 课程学习环境设置 Fork课程仓库到自己的账号 https://github.com/microsoft/generative-ai-for-beginners/fork 点击 ......

Python——第四章:生成器(generator)

生成器(generator): 生成器的本质就是迭代器 创建生成器的两种方案: 1. 生成器函数 2. 生成器表达式 生成器函数 生成器函数中有一个关键字yield 生成器函数执行的时候, 并不会执行函数, 得到的是生成器. yield: 只要函数中出现了yield. 它就是一个生成器函数 作用: ......
生成器 generator Python

ES6 Generator

Generator Generator 函数是一个状态机,封装了多个内部状态。 执行 Generator 函数会返回一个遍历器对象,返回的遍历器对象可以依次遍历 Generator 函数内部的每一个状态。 函数特征:1. function 关键字与函数名之间有一个星号。2. 函数体内部使用 yiel ......
Generator ES6 ES
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