Official implementation of the Neurips 2021 paper Searching Parameterized AP Loss for Object Detection.

Overview

Parameterized AP Loss

By Chenxin Tao, Zizhang Li, Xizhou Zhu, Gao Huang, Yong Liu, Jifeng Dai

This is the official implementation of the Neurips 2021 paper Searching Parameterized AP Loss for Object Detection.

Introduction

TL; DR.

Parameterized AP Loss aims to better align the network training and evaluation in object detection. It builds a unified formula for classification and localization tasks via parameterized functions, where the optimal parameters are searched automatically.

PAPLoss-intro

Introduction.

  • In evaluation of object detectors, Average Precision (AP) captures the performance of localization and classification sub-tasks simultaneously.

  • In training, due to the non-differentiable nature of the AP metric, previous methods adopt separate differentiable losses for the two sub-tasks. Such a mis-alignment issue may well lead to performance degradation.

  • Some existing works seek to design surrogate losses for the AP metric manually, which requires expertise and may still be sub-optimal.

  • In this paper, we propose Parameterized AP Loss, where parameterized functions are introduced to substitute the non-differentiable components in the AP calculation. Different AP approximations are thus represented by a family of parameterized functions in a unified formula. Automatic parameter search algorithm is then employed to search for the optimal parameters. Extensive experiments on the COCO benchmark demonstrate that the proposed Parameterized AP Loss consistently outperforms existing handcrafted losses.

PAPLoss-overview

Main Results with RetinaNet

Model Loss AP config
R50+FPN Focal Loss + L1 37.5 config
R50+FPN Focal Loss + GIoU 39.2 config
R50+FPN AP Loss + L1 35.4 config
R50+FPN aLRP Loss 39.0 config
R50+FPN Parameterized AP Loss 40.5 search config
training config

Main Results with Faster-RCNN

Model Loss AP config
R50+FPN Cross Entropy + L1 39.0 config
R50+FPN Cross Entropy + GIoU 39.1 config
R50+FPN aLRP Loss 40.7 config
R50+FPN AutoLoss-Zero 39.3 -
R50+FPN CSE-AutoLoss-A 40.4 -
R50+FPN Parameterized AP Loss 42.0 search config
training config

Installation

Our implementation is based on MMDetection and aLRPLoss, thanks for their codes!

Requirements

  • Linux or macOS
  • Python 3.6+
  • PyTorch 1.3+
  • CUDA 9.2+
  • GCC 5+
  • mmcv

Recommended configuration: Python 3.7, PyTorch 1.7, CUDA 10.1.

Install mmdetection with Parameterized AP Loss

a. create a conda virtual environment and activate it.

conda create -n paploss python=3.7 -y
conda activate paploss

b. install pytorch and torchvision following official instructions.

conda install pytorch=1.7.0 torchvision=0.8.0 cudatoolkit=10.1 -c pytorch

c. intall mmcv following official instruction. We recommend installing the pre-built mmcv-full. For example, if your CUDA version is 10.1 and pytorch version is 1.7.0, you could run:

pip install mmcv-full -f https://download.openmmlab.com/mmcv/dist/cu101/torch1.7.0/index.html

d. clone the repository.

git clone https://github.com/fundamentalvision/Parameterized-AP-Loss.git
cd Parameterized-AP-Loss

e. Install build requirements and then install mmdetection with Parameterized AP Loss. (We install our forked version of pycocotools via the github repo instead of pypi for better compatibility with our repo.)

pip install -r requirements/build.txt
pip install -v -e .  # or "python setup.py develop"

Usage

Dataset preparation

Please follow the official guide of mmdetection to organize the datasets. Note that we split the original training set into search training and validation sets with this split tool. The recommended data structure is as follows:

Parameterized-AP-Loss
├── mmdet
├── tools
├── configs
└── data
    └── coco
        ├── annotations
        |   ├── search_train2017.json
        |   ├── search_val2017.json
        |   ├── instances_train2017.json
        |   └── instances_val2017.json
        ├── train2017
        ├── val2017
        └── test2017

Searching for Parameterized AP Loss

The search command format is

./tools/dist_search.sh {CONFIG_NAME} {NUM_GPUS}

For example, the command for searching for RetinaNet with 8 GPUs is as follows:

./tools/dist_search.sh ./search_configs/cfg_search_retina.py 8

Training models with the provided parameters

After searching, copy the optimal parameters into the provided training config. We have also provided a set of parameters searched by us.

The re-training command format is

./tools/dist_train.sh {CONFIG_NAME} {NUM_GPUS}

For example, the command for training RetinaNet with 8 GPUs is as follows:

./tools/dist_train.sh ./configs/paploss/paploss_retinanet_r50_fpn.py 8

License

This project is released under the Apache 2.0 license.

Citing Parameterzied AP Loss

If you find Parameterized AP Loss useful in your research, please consider citing:

@inproceedings{tao2021searching,
  title={Searching Parameterized AP Loss for Object Detection},
  author={Tao, Chenxin and Li, Zizhang and Zhu, Xizhou and Huang, Gao and Liu, Yong and Dai, Jifeng},
  booktitle={Thirty-Fifth Conference on Neural Information Processing Systems},
  year={2021}
}
Image-retrieval-baseline - MUGE Multimodal Retrieval Baseline

MUGE Multimodal Retrieval Baseline This repo is implemented based on the open_cl

47 Dec 16, 2022
[ICML 2021] Towards Understanding and Mitigating Social Biases in Language Models

Towards Understanding and Mitigating Social Biases in Language Models This repo contains code and data for evaluating and mitigating bias from generat

Paul Liang 42 Jan 03, 2023
Diverse Branch Block: Building a Convolution as an Inception-like Unit

Diverse Branch Block: Building a Convolution as an Inception-like Unit (PyTorch) (CVPR-2021) DBB is a powerful ConvNet building block to replace regul

253 Dec 24, 2022
Fast convergence of detr with spatially modulated co-attention

Fast convergence of detr with spatially modulated co-attention Usage There are no extra compiled components in SMCA DETR and package dependencies are

peng gao 135 Dec 07, 2022
Taichi Course Homework Template

太极图形课S1-标题部分 这个作业未来或将是你的开源项目,标题的内容可以来自作业中的核心关键词,让读者一眼看出你所完成的工作/做出的好玩demo 如果暂时未想好,起名时可以参考“太极图形课S1-xxx作业” 如下是作业(项目)展开说明的方法,可以帮大家理清思路,并且也对读者非常友好,请小伙伴们多多参

TaichiCourse 30 Nov 19, 2022
[CVPR 2022 Oral] EPro-PnP: Generalized End-to-End Probabilistic Perspective-n-Points for Monocular Object Pose Estimation

EPro-PnP EPro-PnP: Generalized End-to-End Probabilistic Perspective-n-Points for Monocular Object Pose Estimation In CVPR 2022 (Oral). [paper] Hanshen

同济大学智能汽车研究所综合感知研究组 ( Comprehensive Perception Research Group under Institute of Intelligent Vehicles, School of Automotive Studies, Tongji University) 842 Jan 04, 2023
Canonical Capsules: Unsupervised Capsules in Canonical Pose (NeurIPS 2021)

Canonical Capsules: Unsupervised Capsules in Canonical Pose (NeurIPS 2021) Introduction This is the official repository for the PyTorch implementation

165 Dec 07, 2022
Reference implementation of code generation projects from Facebook AI Research. General toolkit to apply machine learning to code, from dataset creation to model training and evaluation. Comes with pretrained models.

This repository is a toolkit to do machine learning for programming languages. It implements tokenization, dataset preprocessing, model training and m

Facebook Research 408 Jan 01, 2023
Official repository of the paper "GPR1200: A Benchmark for General-PurposeContent-Based Image Retrieval"

GPR1200 Dataset GPR1200: A Benchmark for General-Purpose Content-Based Image Retrieval (ArXiv) Konstantin Schall, Kai Uwe Barthel, Nico Hezel, Klaus J

Visual Computing Group 16 Nov 21, 2022
Pytorch implementation of our paper LIMUSE: LIGHTWEIGHT MULTI-MODAL SPEAKER EXTRACTION.

LiMuSE Overview Pytorch implementation of our paper LIMUSE: LIGHTWEIGHT MULTI-MODAL SPEAKER EXTRACTION. LiMuSE explores group communication on a multi

Auditory Model and Cognitive Computing Lab 17 Oct 26, 2022
Code for One-shot Talking Face Generation from Single-speaker Audio-Visual Correlation Learning (AAAI 2022)

One-shot Talking Face Generation from Single-speaker Audio-Visual Correlation Learning (AAAI 2022) Paper | Demo Requirements Python = 3.6 , Pytorch

FuxiVirtualHuman 84 Jan 03, 2023
Racing line optimization algorithm in python that uses Particle Swarm Optimization.

Racing Line Optimization with PSO This repository contains a racing line optimization algorithm in python that uses Particle Swarm Optimization. Requi

Parsa Dahesh 6 Dec 14, 2022
ML models and internal tensors 3D visualizer

The free Zetane Viewer is a tool to help understand and accelerate discovery in machine learning and artificial neural networks. It can be used to ope

Zetane Systems 787 Dec 30, 2022
A tensorflow implementation of an HMM layer

tensorflow_hmm Tensorflow and numpy implementations of the HMM viterbi and forward/backward algorithms. See Keras example for an example of how to use

Zach Dwiel 283 Oct 19, 2022
Supporting code for the Neograd algorithm

Neograd This repo supports the paper Neograd: Gradient Descent with a Near-Ideal Learning Rate, which introduces the algorithm "Neograd". The paper an

Michael Zimmer 12 May 01, 2022
HiddenMarkovModel implements hidden Markov models with Gaussian mixtures as distributions on top of TensorFlow

Class HiddenMarkovModel HiddenMarkovModel implements hidden Markov models with Gaussian mixtures as distributions on top of TensorFlow 2.0 Installatio

Susara Thenuwara 2 Nov 03, 2021
The official PyTorch implementation of the paper: *Xili Dai, Xiaojun Yuan, Haigang Gong, Yi Ma. "Fully Convolutional Line Parsing." *.

F-Clip — Fully Convolutional Line Parsing This repository contains the official PyTorch implementation of the paper: *Xili Dai, Xiaojun Yuan, Haigang

Xili Dai 115 Dec 28, 2022
Attention for PyTorch with Linear Memory Footprint

Attention for PyTorch with Linear Memory Footprint Unofficially implements https://arxiv.org/abs/2112.05682 to get Linear Memory Cost on Attention (+

11 Jan 09, 2022
P-Tuning v2: Prompt Tuning Can Be Comparable to Finetuning Universally Across Scales and Tasks

P-tuning v2 P-Tuning v2: Prompt Tuning Can Be Comparable to Finetuning Universally Across Scales and Tasks An optimized prompt tuning strategy achievi

THUDM 540 Dec 30, 2022
CN24 is a complete semantic segmentation framework using fully convolutional networks

Build status: master (production branch): develop (development branch): Welcome to the CN24 GitHub repository! CN24 is a complete semantic segmentatio

Computer Vision Group Jena 123 Jul 14, 2022