Alpha-IoU: A Family of Power Intersection over Union Losses for Bounding Box Regression

Overview

Alpha-IoU: A Family of Power Intersection over Union Losses for Bounding Box Regression

YOLOv5 with alpha-IoU losses implemented in PyTorch.

Example results on the test set of PASCAL VOC 2007 using YOLOv5s trained by the vanilla IoU loss (top row) and the alpha-IoU loss with alpha=3 (bottom row). The alpha-IoU loss performs better than the vanilla IoU loss because it can localize objects more accurately (image 1 and 2), thus can detect more true positive objects (image 3 to 5) and fewer false positive objects (image 6 and 7).

Example results on the val set of MS COCO 2017 using YOLOv5s trained by the vanilla IoU loss (top row) and the alpha-IoU loss with alpha=3 (bottom row). The alpha-IoU loss performs better than the vanilla IoU loss because it can localize objects more accurately (image 1), thus can detect more true positive objects (image 2 to 5) and fewer false positive objects (image 4 to 7). Note that image 4 and 5 detect both more true positive and fewer false positive objects.

Citation

If you use our method, please consider citing:

@inproceedings{Jiabo_Alpha-IoU,
  author    = {He, Jiabo and Erfani, Sarah and Ma, Xingjun and Bailey, James and Chi, Ying and Hua, Xian-Sheng},
  title     = {Alpha-IoU: A Family of Power Intersection over Union Losses for Bounding Box Regression},
  booktitle = {NeurIPS},
  year      = {2021},
}

Modifications

This repository is a fork of ultralytics/yolov5, with an implementation of alpha-IoU losses while keeping the code as close to the original as possible.

Alpha-IoU Losses

Alpha-IoU losses can be configured in Line 131 of utils/loss.py, functionesd as 'bbox_alpha_iou'. The alpha values and types of losses (e.g., IoU, GIoU, DIoU, CIoU) can be selected in this function, which are defined in utils/general.py. Note that we should use a small constant epsilon to avoid torch.pow(0, alpha) or denominator=0.

Install

Python>=3.6.0 is required with all requirements.txt installed including PyTorch>=1.7:

$ git clone https://github.com/Jacobi93/Alpha-IoU
$ cd Alpha-IoU
$ pip install -r requirements.txt

Configurations

Configuration files can be found in data. We do not change either 'voc.yaml' or 'coco.yaml' used in the original repository. However, we could do more experiments. E.g.,

voc25.yaml # randomly use 25% PASCAL VOC as the training set
voc50.yaml # randomly use 50% PASCAL VOC as the training set

Code for generating different small training sets is in generate_small_sets.py. Code for generating different noisy labels is in generate_noisy_labels.py, and we should change the 'img2label_paths' function in utils/datasets.py accordingly.

Implementation Commands

For detailed installation instruction and network training options, please take a look at the README file or issue of ultralytics/yolov5. Following are sample commands we used for training and testing YOLOv5 with alpha-IoU, with more samples in instruction.txt.

python train.py --data voc.yaml --hyp hyp.scratch.yaml --cfg yolov5s.yaml --batch-size 64 --epochs 300 --device '0'
python test.py --data voc.yaml --img 640 --conf 0.001 --weights 'runs/train/voc_yolov5s_iou/weights/best.pt' --device '0'
python detect.py --source ../VOC/images/detect500 --weights 'runs/train/voc_yolov5s_iou/weights/best.pt' --conf 0.25

We can also randomly generate some images for detection and visualization results in generate_detect_images.py.

Pretrained Weights

Here are some pretrained models using the configurations in this repository, with alpha=3 in all experiments. Details of these pretrained models can be found in runs/train. All results are tested using 'weights/best.pt' for each experiment. It is a very simple yet effective method so that people is able to quickly apply our method to existing models following the 'bbox_alpha_iou' function in utils/general.py. Note that YOLOv5 has been updated for many versions and all pretrained models in this repository are obtained based on the YOLOv5 version 4.0, where details of all versions for YOLOv5 can be found. Researchers are also welcome to apply our method to other object detection models, e.g., Faster R-CNN, DETR, etc.

Owner
Jacobi(Jiabo He)
Jacobi(Jiabo He)
Rethinking the Importance of Implementation Tricks in Multi-Agent Reinforcement Learning

RIIT Our open-source code for RIIT: Rethinking the Importance of Implementation Tricks in Multi-AgentReinforcement Learning. We implement and standard

405 Jan 06, 2023
Label-Free Model Evaluation with Semi-Structured Dataset Representations

Label-Free Model Evaluation with Semi-Structured Dataset Representations Prerequisites This code uses the following libraries Python 3.7 NumPy PyTorch

8 Oct 06, 2022
Download and preprocess popular sequential recommendation datasets

Sequential Recommendation Datasets This repository collects some commonly used sequential recommendation datasets in recent research papers and provid

125 Dec 06, 2022
🚀 PyTorch Implementation of "Progressive Distillation for Fast Sampling of Diffusion Models(v-diffusion)"

PyTorch Implementation of "Progressive Distillation for Fast Sampling of Diffusion Models(v-diffusion)" Unofficial PyTorch Implementation of Progressi

Vitaliy Hramchenko 58 Dec 19, 2022
The Noise Contrastive Estimation for softmax output written in Pytorch

An NCE implementation in pytorch About NCE Noise Contrastive Estimation (NCE) is an approximation method that is used to work around the huge computat

Kaiyu Shi 287 Nov 25, 2022
Implementation of the paper "Language-agnostic representation learning of source code from structure and context".

Code Transformer This is an official PyTorch implementation of the CodeTransformer model proposed in: D. Zügner, T. Kirschstein, M. Catasta, J. Leskov

Daniel Zügner 131 Dec 13, 2022
Planning from Pixels in Environments with Combinatorially Hard Search Spaces -- NeurIPS 2021

PPGS: Planning from Pixels in Environments with Combinatorially Hard Search Spaces Environment Setup We recommend pipenv for creating and managing vir

Autonomous Learning Group 11 Jun 26, 2022
Scenarios, tutorials and demos for Autonomous Driving

The Autonomous Driving Cookbook (Preview) NOTE: This project is developed and being maintained by Project Road Runner at Microsoft Garage. This is cur

Microsoft 2.1k Jan 02, 2023
Running Google MoveNet Multipose Tracking models on OpenVINO.

MoveNet MultiPose Tracking on OpenVINO

60 Nov 17, 2022
TensorFlowOnSpark brings TensorFlow programs to Apache Spark clusters.

TensorFlowOnSpark TensorFlowOnSpark brings scalable deep learning to Apache Hadoop and Apache Spark clusters. By combining salient features from the T

Yahoo 3.8k Jan 04, 2023
Code for the SIGGRAPH 2021 paper "Consistent Depth of Moving Objects in Video".

Consistent Depth of Moving Objects in Video This repository contains training code for the SIGGRAPH 2021 paper "Consistent Depth of Moving Objects in

Google 203 Jan 05, 2023
Supervised multi-SNE (S-multi-SNE): Multi-view visualisation and classification

S-multi-SNE Supervised multi-SNE (S-multi-SNE): Multi-view visualisation and classification A repository containing the code to reproduce the findings

Theodoulos Rodosthenous 3 Apr 15, 2022
Prometheus Exporter for data scraped from datenplattform.darmstadt.de

darmstadt-opendata-exporter Scrapes data from https://datenplattform.darmstadt.de and presents it in the Prometheus Exposition format. Pull requests w

Martin Weinelt 2 Apr 12, 2022
Código de um painel de auto atendimento feito em Python.

Painel de Auto-Atendimento O intuito desse projeto era fazer em Python um programa que simulasse um painel de auto atendimento, no maior estilo Mac Do

Calebe Alves Evangelista 2 Nov 09, 2022
Official repository for "PAIR: Planning and Iterative Refinement in Pre-trained Transformers for Long Text Generation"

pair-emnlp2020 Official repository for the paper: Xinyu Hua and Lu Wang: PAIR: Planning and Iterative Refinement in Pre-trained Transformers for Long

Xinyu Hua 31 Oct 13, 2022
Large-scale Hyperspectral Image Clustering Using Contrastive Learning, CIKM 21 Workshop

Spectral-spatial contrastive clustering (SSCC) Yaoming Cai, Yan Liu, Zijia Zhang, Zhihua Cai, and Xiaobo Liu, Large-scale Hyperspectral Image Clusteri

Yaoming Cai 4 Nov 02, 2022
TransferNet: Learning Transferrable Knowledge for Semantic Segmentation with Deep Convolutional Neural Network

TransferNet: Learning Transferrable Knowledge for Semantic Segmentation with Deep Convolutional Neural Network Created by Seunghoon Hong, Junhyuk Oh,

42 Jun 29, 2022
SIMULEVAL A General Evaluation Toolkit for Simultaneous Translation

SimulEval SimulEval is a general evaluation framework for simultaneous translation on text and speech. Requirement python = 3.7.0 Installation git cl

Facebook Research 48 Dec 28, 2022
Official PyTorch Code of GrooMeD-NMS: Grouped Mathematically Differentiable NMS for Monocular 3D Object Detection (CVPR 2021)

GrooMeD-NMS: Grouped Mathematically Differentiable NMS for Monocular 3D Object Detection GrooMeD-NMS: Grouped Mathematically Differentiable NMS for Mo

Abhinav Kumar 76 Jan 02, 2023
Group project for MFIN7036. Our goal is to predict firm profitability with text-based competition measures.

NLP_0-project Group project for MFIN7036. Our goal is to predict firm profitability with text-based competition measures1. We are a "democratic" and c

3 Mar 16, 2022