Code for "The Box Size Confidence Bias Harms Your Object Detector"

Overview

The Box Size Confidence Bias Harms Your Object Detector - Code

Disclaimer: This repository is for research purposes only. It is designed to maintain reproducibility of the experiments described in "The Box Size Confidence Bias Harms Your Object Detector".

Setup

Download Annotations

Download COCO2017 annotations for train, val, and tes-dev from here and move them into the folder structure like this (alternatively change the config in config/all/paths/annotations/coco_2017.yaml to your local folder structure):

 .
 └── data
   └── coco
      └── annotations
        ├── instances_train2017.json
        ├── instances_val2017.json
        └── image_info_test-dev2017.json

Generate Detections

Generate detections on the train, val, and test-dev COCO2017 set, save them in the COCO file format as JSON files. Move detections to data/detections/MODEL_NAME, see config/all/detections/default_all.yaml for all the used detectors and to add other detectors.
The official implementations for the used detectors are:

Examples

CenterNet (Hourglass)

To generate the Detections for CenterNet with Hourglass backbone first follow the installation instructions. Then download ctdet_coco_hg.pth to /models from the official source Then generate the detections from the /src folder:

test_train.py python3 test_train.py ctdet --arch hourglass --exp_id Centernet_HG_train --dataset coco --load_model ../models/ctdet_coco_hg.pth ">
# On val
python3 test.py ctdet --arch hourglass --exp_id Centernet_HG_val --dataset coco --load_model ../models/ctdet_coco_hg.pth 
# On test-dev
python3 test.py ctdet --arch hourglass --exp_id Centernet_HG_test-dev --dataset coco --load_model ../models/ctdet_coco_hg.pth --trainval
# On train
sed '56s/.*/  split = "train"/' test.py > test_train.py
python3 test_train.py ctdet --arch hourglass --exp_id Centernet_HG_train --dataset coco --load_model ../models/ctdet_coco_hg.pth

The scaling for TTA is set via the "--test_scales LIST_SCALES" flag. So to generate only the 0.5x-scales: --test_scales 0.5

RetinaNet with MMDetection

To generate the de detection files using mmdet, first follow the installation instructions. Then download specific model weights, in this example retinanet_x101_64x4d_fpn_2x_coco_20200131-bca068ab.pth to PATH_TO_DOWNLOADED_WEIGHTS and execute the following commands:

python3 tools/test.py configs/retinanet/retinanet_x101_64x4d_fpn_2x_coco.py PATH_TO_DOWNLOADED_WEIGHTS/retinanet_x101_64x4d_fpn_2x_coco_20200131-bca068ab.pth  --eval bbox --eval-options jsonfile_prefix='PATH_TO_THIS_REPO/detections/retinanet_x101_64x4d_fpn_2x/train2017' --cfg-options data.test.img_prefix='PATH_TO_COCO_IMGS/train2017' data.test.ann_file='PATH_TO_COCO_ANNS/annotations/instances_train2017.json'
python3 tools/test.py configs/retinanet/retinanet_x101_64x4d_fpn_2x_coco.py PATH_TO_DOWNLOADED_WEIGHTS/retinanet_x101_64x4d_fpn_2x_coco_20200131-bca068ab.pth  --eval bbox --eval-options jsonfile_prefix='PATH_TO_THIS_REPO/detections/retinanet_x101_64x4d_fpn_2x/val2017' --cfg-options data.test.img_prefix='PATH_TO_COCO_IMGS/val2017' data.test.ann_file='PATH_TO_COCO_ANNS/annotations/instances_val2017.json'
python3 tools/test.py configs/retinanet/retinanet_x101_64x4d_fpn_2x_coco.py PATH_TO_DOWNLOADED_WEIGHTS/retinanet_x101_64x4d_fpn_2x_coco_20200131-bca068ab.pth  --eval bbox --eval-options jsonfile_prefix='PATH_TO_THIS_REPO/detections/retinanet_x101_64x4d_fpn_2x/test-dev2017' --cfg-options data.test.img_prefix='PATH_TO_COCO_IMGS/test2017' data.test.ann_file='PATH_TO_COCO_ANNS/annotations/image_info_test-dev2017.json'

Install Dependencies

pip3 install -r requirements.txt
Optional Dependencies
# Faster coco evaluation (used if available)
pip3 install fast_coco_eval
# Parallel multi-runs, if enough RAM is available (add "hydra/launcher=joblib" to every command with -m flag)
pip install hydra-joblib-launcher

Experiments

Most of the experiments are performed using the CenterNet(HG) detections to change the detector add detections=OTHER_DETECTOR, with the location of OTHER_DETECTORs detections specified in config/all/detections/default_all.yaml. The results of each experiment are saved to outputs/EXPERIMENT/DATE and multirun/EXPERIMENT/DATE in the case of a multirun (-m flag).

Figure 2: Calibration curve of histogram binning and modified version

# original histogram binning calibration curve
python3 create_plots.py -cn plot_org_hist_bin
# modified histogram binning calibration curve:
python3 create_plots.py -cn plot_mod_hist_bin

Table 1: Ablation of histogram binning modifications

python3 calibrate.py -cn ablate_modified_hist 

Table 2: Ablation of optimization metrics of calibration on validation split

python3 calibrate.py -cn ablate_metrics  "seed=range(4,14)" -m

Figure 3: Bounding box size bias on train and val data detections

Plot of calibration curve:

# on validation data
python3 create_plots.py -cn plot_miscal name="plot_miscal_val" split="val"
# on train data:
python3 create_plots.py -cn plot_miscal name="plot_miscal_train" split="train" calib.conf_bins=20

Table 3: Ablation of optimization metrics of calibration on training data

python3 calibrate.py -cn explore_train

Table 4: Effect of individual calibration on TTA

  1. Generate detections (on train and val split) for each scale-factor individually (CenterNet_HG_TTA_050, CenterNet_HG_TTA_075, CenterNet_HG_TTA_100, CenterNet_HG_TTA_125, CenterNet_HG_TTA_150) and for complete TTA (CenterNet_HG_TTA_ens)

  2. Generate individually calibrated detections..

    python3 calibrate.py -cn calibrate_train name="calibrate_train_tta" detector="CenterNet_HG_TTA_050","CenterNet_HG_TTA_075","CenterNet_HG_TTA_100","CenterNet_HG_TTA_125","CenterNet_HG_TTA_150","CenterNet_HG_TTA_ens" -m
  3. Copy calibrated detections from multirun/calibrate_train_tta/DATE/MODEL_NAME/quantile_spline_ontrain_opt_tradeoff_full/val/MODEL_NAME.json to data/calibrated/MODEL_NAME/val/results.json for MODEL_NAME in (CenterNet_HG_TTA_050, CenterNet_HG_TTA_075, CenterNet_HG_TTA_100, CenterNet_HG_TTA_125, CenterNet_HG_TTA_150).

  4. Generate TTA of calibrated detections

    python3 enseble.py -cn enseble

Figure 4: Ablation of IoU threshold

python3 calibrate.py -cn calibrate_train name="ablate_iou" "iou_threshold=range(0.5,0.96,0.05)" -m

Table 5: Calibration method on different model

python3 calibrate.py -cn calibrate_train name="calibrate_all_models" detector=LIST_ALL_MODELS -m

The test-dev predictions are found in multirun/calibrate_all_models/DATE/MODEL_NAME/quantile_spline_ontrain_opt_tradeoff_full/test/MODEL_NAME.json and can be evaluated using the official evaluation sever.

Supplementary Material

A.Figure 5 & 6: Performance Change for Extended Optimization Metrics

python3 calibrate.py -cn ablate_metrics_extended  "seed=range(4,14)" -m

A.Table 6: Influence of parameter search spaces on performance gain

# Results for B0, C0
python3 calibrate.py -cn calibrate_train
# Results for B0, C1
python3 calibrate.py -cn calibrate_train_larger_cbins
# Results for B0 union B1, C0
python3 calibrate.py -cn calibrate_train_larger_bbins
# Results for B0 union B1, C0 union C1
python3 calibrate.py -cn calibrate_train_larger_cbbins

A.Table 7: Influence of calibration method on different sized versions of EfficientDet

python3 calibrate.py -cn calibrate_train name="influence_modelsize" detector="Efficientdet_D0","Efficientdet_D1","Efficientdet_D2","Efficientdet_D3","Efficientdet_D4","Efficientdet_D5","Efficientdet_D6","Efficientdet_D7" -m
You might also like...
Code to use Augmented Shapiro Wilks Stopping, as well as code for the paper "Statistically Signifigant Stopping of Neural Network Training"

This codebase is being actively maintained, please create and issue if you have issues using it Basics All data files are included under losses and ea

Opinionated code formatter, just like Python's black code formatter but for Beancount

beancount-black Opinionated code formatter, just like Python's black code formatter but for Beancount Try it out online here Features MIT licensed - b

a delightful machine learning tool that allows you to train, test and use models without writing code
a delightful machine learning tool that allows you to train, test and use models without writing code

igel A delightful machine learning tool that allows you to train/fit, test and use models without writing code Note I'm also working on a GUI desktop

Pytorch Lightning code guideline for conferences

Deep learning project seed Use this seed to start new deep learning / ML projects. Built in setup.py Built in requirements Examples with MNIST Badges

Automatically Build Multiple ML Models with a Single Line of Code. Created by Ram Seshadri. Collaborators Welcome. Permission Granted upon Request.
Automatically Build Multiple ML Models with a Single Line of Code. Created by Ram Seshadri. Collaborators Welcome. Permission Granted upon Request.

Auto-ViML Automatically Build Variant Interpretable ML models fast! Auto_ViML is pronounced "auto vimal" (autovimal logo created by Sanket Ghanmare) N

Code samples for my book "Neural Networks and Deep Learning"

Code samples for "Neural Networks and Deep Learning" This repository contains code samples for my book on "Neural Networks and Deep Learning". The cod

Code for: https://berkeleyautomation.github.io/bags/

DeformableRavens Code for the paper Learning to Rearrange Deformable Cables, Fabrics, and Bags with Goal-Conditioned Transporter Networks. Here is the

Code for our method RePRI for Few-Shot Segmentation. Paper at http://arxiv.org/abs/2012.06166
Code for our method RePRI for Few-Shot Segmentation. Paper at http://arxiv.org/abs/2012.06166

Region Proportion Regularized Inference (RePRI) for Few-Shot Segmentation In this repo, we provide the code for our paper : "Few-Shot Segmentation Wit

Applications using the GTN library and code to reproduce experiments in "Differentiable Weighted Finite-State Transducers"

gtn_applications An applications library using GTN. Current examples include: Offline handwriting recognition Automatic speech recognition Installing

Owner
Johannes G.
Johannes G.
VR-Caps: A Virtual Environment for Active Capsule Endoscopy

VR-Caps: A Virtual Environment for Capsule Endoscopy Overview We introduce a virtual active capsule endoscopy environment developed in Unity that prov

DeepMIA Lab 90 Dec 27, 2022
Efficient Lottery Ticket Finding: Less Data is More

The lottery ticket hypothesis (LTH) reveals the existence of winning tickets (sparse but critical subnetworks) for dense networks, that can be trained in isolation from random initialization to match

VITA 20 Sep 04, 2022
Official Pytorch implementation of the paper "MotionCLIP: Exposing Human Motion Generation to CLIP Space"

MotionCLIP Official Pytorch implementation of the paper "MotionCLIP: Exposing Human Motion Generation to CLIP Space". Please visit our webpage for mor

Guy Tevet 173 Dec 26, 2022
Adversarial Reweighting for Partial Domain Adaptation

Adversarial Reweighting for Partial Domain Adaptation Code for paper "Xiang Gu, Xi Yu, Yan Yang, Jian Sun, Zongben Xu, Adversarial Reweighting for Par

12 Dec 01, 2022
Curated list of awesome GAN applications and demo

gans-awesome-applications Curated list of awesome GAN applications and demonstrations. Note: General GAN papers targeting simple image generation such

Minchul Shin 4.5k Jan 07, 2023
ATOMIC 2020: On Symbolic and Neural Commonsense Knowledge Graphs

(Comet-) ATOMIC 2020: On Symbolic and Neural Commonsense Knowledge Graphs Paper Jena D. Hwang, Chandra Bhagavatula, Ronan Le Bras, Jeff Da, Keisuke Sa

AI2 152 Dec 27, 2022
[CVPR 2021] Pytorch implementation of Hijack-GAN: Unintended-Use of Pretrained, Black-Box GANs

Hijack-GAN: Unintended-Use of Pretrained, Black-Box GANs In this work, we propose a framework HijackGAN, which enables non-linear latent space travers

Hui-Po Wang 46 Sep 05, 2022
This repository contains the code used for the implementation of the paper "Probabilistic Regression with HuberDistributions"

Public_prob_regression_with_huber_distributions This repository contains the code used for the implementation of the paper "Probabilistic Regression w

David Mohlin 1 Dec 04, 2021
Framework to build and train RL algorithms

RayLink RayLink is a RL framework used to build and train RL algorithms. RayLink was used to build a RL framework, and tested in a large-scale multi-a

Bytedance Inc. 32 Oct 07, 2022
AI Summer's complete catalog of articles

Learn Deep Learning with AI Summer A collection of all articles (almost 100) written for the AI Summer blog organized by topic. Deep Learning Theory M

AI Summer 95 Dec 29, 2022
Tensor-Based Quantum Machine Learning

TensorLy_Quantum TensorLy-Quantum is a Python library for Tensor-Based Quantum Machine Learning that builds on top of TensorLy and PyTorch. Website: h

TensorLy 85 Dec 03, 2022
PEPit is a package enabling computer-assisted worst-case analyses of first-order optimization methods.

PEPit: Performance Estimation in Python This open source Python library provides a generic way to use PEP framework in Python. Performance estimation

Baptiste 53 Nov 16, 2022
SwinIR: Image Restoration Using Swin Transformer

SwinIR: Image Restoration Using Swin Transformer This repository is the official PyTorch implementation of SwinIR: Image Restoration Using Shifted Win

Jingyun Liang 2.4k Jan 08, 2023
Pytorch implementation of the paper "Topic Modeling Revisited: A Document Graph-based Neural Network Perspective"

Graph Neural Topic Model (GNTM) This is the pytorch implementation of the paper "Topic Modeling Revisited: A Document Graph-based Neural Network Persp

Dazhong Shen 8 Sep 14, 2022
CTF challenges and write-ups for MicroCTF 2021.

MicroCTF 2021 Qualifications About This repository contains CTF challenges and official write-ups for MicroCTF 2021 Qualifications. License Distribute

Shellmates 12 Dec 27, 2022
Public Models considered for emotion estimation from EEG

Emotion-EEG Set of models for emotion estimation from EEG. Composed by the combination of two deep-learing models learning together (RNN and CNN) with

Victor Delvigne 21 Dec 23, 2022
Bidimensional Leaderboards: Generate and Evaluate Language Hand in Hand

Bidimensional Leaderboards: Generate and Evaluate Language Hand in Hand Introduction We propose a generalization of leaderboards, bidimensional leader

4 Dec 03, 2022
STRIVE: Scene Text Replacement In Videos

STRIVE: Scene Text Replacement In Videos Dataset Types: RoboText SynthText RealWorld videos RoboText : Videos of texts collected using navigation robo

15 Jul 11, 2022
Learning to Initialize Neural Networks for Stable and Efficient Training

GradInit This repository hosts the code for experiments in the paper, GradInit: Learning to Initialize Neural Networks for Stable and Efficient Traini

Chen Zhu 124 Dec 30, 2022
TensorRT examples (Jetson, Python/C++)(object detection)

TensorRT examples (Jetson, Python/C++)(object detection)

Nobuo Tsukamoto 53 Dec 22, 2022