[CVPR 2021] Involution: Inverting the Inherence of Convolution for Visual Recognition, a brand new neural operator

Overview

involution

Official implementation of a neural operator as described in Involution: Inverting the Inherence of Convolution for Visual Recognition (CVPR'21)

By Duo Li, Jie Hu, Changhu Wang, Xiangtai Li, Qi She, Lei Zhu, Tong Zhang, and Qifeng Chen

TL; DR. involution is a general-purpose neural primitive that is versatile for a spectrum of deep learning models on different vision tasks. involution bridges convolution and self-attention in design, while being more efficient and effective than convolution, simpler than self-attention in form.

Getting Started

This repository is fully built upon the OpenMMLab toolkits. For each individual task, the config and model files follow the same directory organization as mmcls, mmdet, and mmseg respectively, so just copy-and-paste them to the corresponding locations to get started.

For example, in terms of evaluating detectors

git clone https://github.com/open-mmlab/mmdetection # and install

cp det/mmdet/models/backbones/* mmdetection/mmdet/models/backbones
cp det/mmdet/models/necks/* mmdetection/mmdet/models/necks
cp det/mmdet/models/utils/* mmdetection/mmdet/models/utils

cp det/configs/_base_/models/* mmdetection/mmdet/configs/_base_/models
cp det/configs/_base_/schedules/* mmdetection/mmdet/configs/_base_/schedules
cp det/configs/involution mmdetection/mmdet/configs -r

cd mmdetection
# evaluate checkpoints
bash tools/dist_test.sh ${CONFIG_FILE} ${CHECKPOINT_FILE} ${GPU_NUM} [--out ${RESULT_FILE}] [--eval ${EVAL_METRICS}]

For more detailed guidance, please refer to the original mmcls, mmdet, and mmseg tutorials.

Currently, we provide an memory-efficient implementation of the involuton operator based on CuPy. Please install this library in advance. A customized CUDA kernel would bring about further acceleration on the hardware. Any contribution from the community regarding this is welcomed!

Model Zoo

The parameters/FLOPs↓ and performance↑ compared to the convolution baselines are marked in the parentheses. Part of these checkpoints are obtained in our reimplementation runs, whose performance may show slight differences with those reported in our paper. Models are trained with 64 GPUs on ImageNet, 8 GPUs on COCO, and 4 GPUs on Cityscapes.

Image Classification on ImageNet

Model Params(M) FLOPs(G) Top-1 (%) Top-5 (%) Config Download
RedNet-26 9.23(32.8%↓) 1.73(29.2%↓) 75.96 93.19 config model | log
RedNet-38 12.39(36.7%↓) 2.22(31.3%↓) 77.48 93.57 config model | log
RedNet-50 15.54(39.5%↓) 2.71(34.1%↓) 78.35 94.13 config model | log
RedNet-101 25.65(42.6%↓) 4.74(40.5%↓) 78.92 94.35 config model | log
RedNet-152 33.99(43.5%↓) 6.79(41.4%↓) 79.12 94.38 config model | log

Before finetuning on the following downstream tasks, download the ImageNet pre-trained RedNet-50 weights and set the pretrained argument in det/configs/_base_/models/*.py or seg/configs/_base_/models/*.py to your local path.

Object Detection and Instance Segmentation on COCO

Faster R-CNN

Backbone Neck Style Lr schd Params(M) FLOPs(G) box AP Config Download
RedNet-50-FPN convolution pytorch 1x 31.6(23.9%↓) 177.9(14.1%↓) 39.5(1.8↑) config model | log
RedNet-50-FPN involution pytorch 1x 29.5(28.9%↓) 135.0(34.8%↓) 40.2(2.5↑) config model | log

Mask R-CNN

Backbone Neck Style Lr schd Params(M) FLOPs(G) box AP mask AP Config Download
RedNet-50-FPN convolution pytorch 1x 34.2(22.6%↓) 224.2(11.5%↓) 39.9(1.5↑) 35.7(0.8↑) config model | log
RedNet-50-FPN involution pytorch 1x 32.2(27.1%↓) 181.3(28.5%↓) 40.8(2.4↑) 36.4(1.3↑) config model | log

RetinaNet

Backbone Neck Style Lr schd Params(M) FLOPs(G) box AP Config Download
RedNet-50-FPN convolution pytorch 1x 27.8(26.3%↓) 210.1(12.2%↓) 38.2(1.6↑) config model | log
RedNet-50-FPN involution pytorch 1x 26.3(30.2%↓) 199.9(16.5%↓) 38.2(1.6↑) config model | log

Semantic Segmentation on Cityscapes

Method Backbone Neck Crop Size Lr schd Params(M) FLOPs(G) mIoU Config download
FPN RedNet-50 convolution 512x1024 80000 18.5(35.1%↓) 293.9(19.0%↓) 78.0(3.6↑) config model | log
FPN RedNet-50 involution 512x1024 80000 16.4(42.5%↓) 205.2(43.4%↓) 79.1(4.7↑) config model | log
UPerNet RedNet-50 convolution 512x1024 80000 56.4(15.1%↓) 1825.6(3.6%↓) 80.6(2.4↑) config model | log

Citation

If you find our work useful in your research, please cite:

@InProceedings{Li_2021_CVPR,
author = {Li, Duo and Hu, Jie and Wang, Changhu and Li, Xiangtai and She, Qi and Zhu, Lei and Zhang, Tong and Chen, Qifeng},
title = {Involution: Inverting the Inherence of Convolution for Visual Recognition},
booktitle = {IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2021}
}
Ray tracing of a Schwarzschild black hole written entirely in TensorFlow.

TensorGeodesic Ray tracing of a Schwarzschild black hole written entirely in TensorFlow. Dependencies: Python 3 TensorFlow 2.x numpy matplotlib About

5 Jan 15, 2022
TalkNet 2: Non-Autoregressive Depth-Wise Separable Convolutional Model for Speech Synthesis with Explicit Pitch and Duration Prediction.

TalkNet 2 [WIP] TalkNet 2: Non-Autoregressive Depth-Wise Separable Convolutional Model for Speech Synthesis with Explicit Pitch and Duration Predictio

Rishikesh (ऋषिकेश) 69 Dec 17, 2022
Implementation of Vaswani, Ashish, et al. "Attention is all you need."

Attention Is All You Need Paper Implementation This is my from-scratch implementation of the original transformer architecture from the following pape

Brando Koch 195 Dec 30, 2022
PyTorch Implementation of DiffGAN-TTS: High-Fidelity and Efficient Text-to-Speech with Denoising Diffusion GANs

DiffGAN-TTS - PyTorch Implementation PyTorch implementation of DiffGAN-TTS: High

Keon Lee 157 Jan 01, 2023
A curated list of references for MLOps

A curated list of references for MLOps

Larysa Visengeriyeva 9.3k Jan 07, 2023
Inference pipeline for our participation in the FeTA challenge 2021.

feta-inference Inference pipeline for our participation in the FeTA challenge 2021. Team name: TRABIT Installation Download the two folders in https:/

Lucas Fidon 2 Apr 13, 2022
A simple but complete full-attention transformer with a set of promising experimental features from various papers

x-transformers A concise but fully-featured transformer, complete with a set of promising experimental features from various papers. Install $ pip ins

Phil Wang 2.3k Jan 03, 2023
Papers about explainability of GNNs

Papers about explainability of GNNs

Dongsheng Luo 236 Jan 04, 2023
Reinforcement Learning for Portfolio Management

qtrader Reinforcement Learning for Portfolio Management Why Reinforcement Learning? Learns the optimal action, rather than models the market. Adaptive

Angelos Filos 406 Jan 01, 2023
High-fidelity 3D Model Compression based on Key Spheres

High-fidelity 3D Model Compression based on Key Spheres This repository contains the implementation of the paper: Yuanzhan Li, Yuqi Liu, Yujie Lu, Siy

5 Oct 11, 2022
Simple Python application to transform Serial data into OSC messages

SerialToOSC-Bridge Simple Python application to transform Serial data into OSC messages. The current purpose is to be a compatibility layer between ha

Division of Applied Acoustics at Chalmers University of Technology 3 Jun 03, 2021
Implementation of ECCV20 paper: the devil is in classification: a simple framework for long-tail object detection and instance segmentation

Implementation of our ECCV 2020 paper The Devil is in Classification: A Simple Framework for Long-tail Instance Segmentation This repo contains code o

twang 98 Sep 17, 2022
An implementation of a discriminant function over a normal distribution to help classify datasets.

CS4044D Machine Learning Assignment 1 By Dev Sony, B180297CS The question, report and source code can be found here. Github Repo Solution 1 Based on t

Dev Sony 6 Nov 09, 2021
Faster Convex Lipschitz Regression

Faster Convex Lipschitz Regression This reepository provides a python implementation of our Faster Convex Lipschitz Regression algorithm with GPU and

Ali Siahkamari 0 Nov 19, 2021
Official implementation of Rich Semantics Improve Few-Shot Learning (BMVC, 2021)

Rich Semantics Improve Few-Shot Learning Paper Link Abstract : Human learning benefits from multi-modal inputs that often appear as rich semantics (e.

Mohamed Afham 11 Jul 26, 2022
Convnext-tf - Unofficial tensorflow keras implementation of ConvNeXt

ConvNeXt Tensorflow This is unofficial tensorflow keras implementation of ConvNe

29 Oct 06, 2022
3D-Reconstruction 基于深度学习方法的单目多视图三维重建

基于深度学习方法的单目多视图三维重建 Part I 三维重建 代码:Part1 技术文档:[Markdown] [PDF] 原始图像:Original Images 点云结果:Point Cloud Results-1

HMT_Curo 19 Dec 26, 2022
Simple tutorials using Google's TensorFlow Framework

TensorFlow-Tutorials Introduction to deep learning based on Google's TensorFlow framework. These tutorials are direct ports of Newmu's Theano Tutorial

Nathan Lintz 6k Jan 06, 2023
Tutorial: Introduction to Graph Machine Learning, with Jupyter notebooks

GraphMLTutorialNLDL22 Tutorial NLDL22: Introduction to Graph Machine Learning, with Jupyter notebooks This tutorial takes place during the conference

UiT Machine Learning Group 3 Jan 10, 2022
Tensorflow implementation of the paper "HumanGPS: Geodesic PreServing Feature for Dense Human Correspondences", CVPR 2021.

HumanGPS: Geodesic PreServing Feature for Dense Human Correspondences Tensorflow implementation of the paper "HumanGPS: Geodesic PreServing Feature fo

Google Interns 50 Dec 21, 2022