Improving Object Detection by Estimating Bounding Box Quality Accurately

Related tags

Deep LearningLQM
Overview

Improving Object Detection by Estimating Bounding Box Quality Accurately

Abstract

Object detection aims to locate and classify object instances in images. Therefore, the object detection model is generally implemented with two parallel branches to optimize localization and classification. After training the detection model, we should select the best bounding box of each class among a number of estimations for reliable inference. Generally, NMS (Non Maximum Suppression) is operated to suppress low-quality bounding boxes by referring to classification scores or center-ness scores. However, since the quality of bounding boxes is not considered, the low-quality bounding boxes can be accidentally selected as a positive bounding box for the corresponding class. We believe that this misalignment between two parallel tasks causes degrading of the object detection performance. In this paper, we propose a method to estimate bounding boxes' quality using four-directional Gaussian quality modeling, which leads the consistent results between two parallel branches. Extensive experiments on the MS COCO benchmark show that the proposed method consistently outperforms the baseline (FCOS). Eventually, our best model offers the state-of-the-art performance by achieving 48.9% in AP. We also confirm the efficiency of the method by comparing the number of parameters and computational overhead.

Overall Architecture

Implementation Details

We implement our detection model on top of MMDetection (v2.6), an open source object detection toolbox. If not specified separately, the default settings of FCOS implementation are not changed. We train and validate our network on four RTX TITAN GPUs in the environment of Pytorch v1.6 and CUDA v10.2.

Please see GETTING_STARTED.md for the basic usage of MMDetection.

Installation


  1. Clone the this repository.

    git clone https://github.com/sanghun3819/LQM.git
    cd LQM
  2. Create a conda virtural environment and install dependencies.

    conda env create -f environment.yml
  3. Activate conda environment

    conda activate lqm
  4. Install build requirements and then install MMDetection.

    pip install -r requirements/build.txt
    pip install -v -e .

Preparing MS COCO dataset


bash download_coco.sh

Preparing Pre-trained model weights


bash download_weights.sh

Train


# assume that you are under the root directory of this project,
# and you have activated your virtual environment if needed.
# and with COCO dataset in 'data/coco/'

./tools/dist_train.sh configs/uncertainty_guide/uncertainty_guide_r50_fpn_1x.py 4 --validate

Inference


./tools/dist_test.sh configs/uncertainty_guide/uncertainty_guide_r50_fpn_1x.py work_dirs/uncertainty_guide_r50_fpn_1x/epoch_12.pth 4 --eval bbox

Image demo using pretrained model weight


# Result will be saved under the demo directory of this project (detection_result.jpg)
# config, checkpoint, source image path are needed (If you need pre-trained weights, you can download them from provided google drive link)
# score threshold is optional

python demo/LQM_image_demo.py --config configs/uncertainty_guide/uncertainty_guide_r50_fpn_1x.py --checkpoint work_dirs/pretrained/LQM_r50_fpn_1x.pth --img data/coco/test2017/000000011245.jpg --score-thr 0.3

Models


For your convenience, we provide the following trained models. All models are trained with 16 images in a mini-batch with 4 GPUs.

Model Multi-scale training AP (minival) Link
LQM_R50_FPN_1x No 40.0 Google
LQM_R101_FPN_2x Yes 44.8 Google
LQM_R101_dcnv2_FPN_2x Yes 47.4 Google
LQM_X101_FPN_2x Yes 47.2 Google
LQM_X101_dcnv2_FPN_2x Yes 48.9 Google
Face recognize system

FRS Face_recognize_system This project contains my work that target on solving some problems of FRS: Face detection: Retinaface Face anti-spoofing: Fo

Tran Anh Tuan 4 Nov 18, 2021
Unofficial implementation of "Coordinate Attention for Efficient Mobile Network Design"

Unofficial implementation of "Coordinate Attention for Efficient Mobile Network Design". CoordAttention tensorflow slim

Billy 9 Aug 22, 2022
CT Based COVID 19 Diagnose by Image Processing and Deep Learning

This project proposed the deep learning and image processing method to undertake the diagnosis on 2D CT image and 3D CT volume.

1 Feb 08, 2022
Official PyTorch implementation of PS-KD

Self-Knowledge Distillation with Progressive Refinement of Targets (PS-KD) Accepted at ICCV 2021, oral presentation Official PyTorch implementation of

61 Dec 28, 2022
CCNet: Criss-Cross Attention for Semantic Segmentation (TPAMI 2020 & ICCV 2019).

CCNet: Criss-Cross Attention for Semantic Segmentation Paper Links: Our most recent TPAMI version with improvements and extensions (Earlier ICCV versi

Zilong Huang 1.3k Dec 27, 2022
Code for `BCD Nets: Scalable Variational Approaches for Bayesian Causal Discovery`, Neurips 2021

This folder contains the code for 'Scalable Variational Approaches for Bayesian Causal Discovery'. Installation To install, use conda with conda env c

14 Sep 21, 2022
Readings for "A Unified View of Relational Deep Learning for Polypharmacy Side Effect, Combination Therapy, and Drug-Drug Interaction Prediction."

Polypharmacy - DDI - Synergy Survey The Survey Paper This repository accompanies our survey paper A Unified View of Relational Deep Learning for Polyp

AstraZeneca 79 Jan 05, 2023
Local Similarity Pattern and Cost Self-Reassembling for Deep Stereo Matching Networks

Local Similarity Pattern and Cost Self-Reassembling for Deep Stereo Matching Networks Contributions A novel pairwise feature LSP to extract structural

31 Dec 06, 2022
GemNet model in PyTorch, as proposed in "GemNet: Universal Directional Graph Neural Networks for Molecules" (NeurIPS 2021)

GemNet: Universal Directional Graph Neural Networks for Molecules Reference implementation in PyTorch of the geometric message passing neural network

Data Analytics and Machine Learning Group 124 Dec 30, 2022
Learning to Draw: Emergent Communication through Sketching

Learning to Draw: Emergent Communication through Sketching This is the official code for the paper "Learning to Draw: Emergent Communication through S

19 Jul 22, 2022
Weakly-supervised object detection.

Wetectron Wetectron is a software system that implements state-of-the-art weakly-supervised object detection algorithms. Project CVPR'20, ECCV'20 | Pa

NVIDIA Research Projects 342 Jan 05, 2023
Churn-Prediction-Project - In this project, a churn prediction model is developed for a private bank as a term project for Data Mining class.

Churn-Prediction-Project In this project, a churn prediction model is developed for a private bank as a term project for Data Mining class. Project in

1 Jan 03, 2022
PyTorch implementation of "Simple and Deep Graph Convolutional Networks"

Simple and Deep Graph Convolutional Networks This repository contains a PyTorch implementation of "Simple and Deep Graph Convolutional Networks".(http

chenm 253 Dec 08, 2022
Visyerres sgdf woob - Modules Woob pour l'intranet et autres sites Scouts et Guides de France

Vis'Yerres SGDF - Modules Woob Vous avez le sentiment que l'intranet des Scouts

Thomas Touhey (pas un pseudonyme) 3 Dec 24, 2022
small collection of functions for neural networks

neurobiba other languages: RU small collection of functions for neural networks. very easy to use! Installation: pip install neurobiba See examples h

4 Aug 23, 2021
PyTorch implementation of hand mesh reconstruction described in CMR and MobRecon.

Hand Mesh Reconstruction Introduction This repo is the PyTorch implementation of hand mesh reconstruction described in CMR and MobRecon. Update 2021-1

Xingyu Chen 236 Dec 29, 2022
Python library for tracking human heads with FLAME (a 3D morphable head model)

Video Head Tracker 3D tracking library for human heads based on FLAME (a 3D morphable head model). The tracking algorithm is inspired by face2face. It

61 Dec 25, 2022
Few-shot NLP benchmark for unified, rigorous eval

FLEX FLEX is a benchmark and framework for unified, rigorous few-shot NLP evaluation. FLEX enables: First-class NLP support Support for meta-training

AI2 85 Dec 03, 2022
Code for binary and multiclass model change active learning, with spectral truncation implementation.

Model Change Active Learning Paper (To Appear) Python code for doing active learning in graph-based semi-supervised learning (GBSSL) paradigm. Impleme

Kevin Miller 1 Jul 24, 2022
Face recognition system using MTCNN, FACENET, SVM and FAST API to track participants of Big Brother Brasil in real time.

BBB Face Recognizer Face recognition system using MTCNN, FACENET, SVM and FAST API to track participants of Big Brother Brasil in real time. Instalati

Rafael Azevedo 232 Dec 24, 2022