Learning Tracking Representations via Dual-Branch Fully Transformer Networks

Related tags

Deep LearningDualTFR
Overview

Learning Tracking Representations via Dual-Branch Fully Transformer Networks

DualTFR

We achieves the runner-ups for both VOT2021ST (short-term) and RT(real-time). The variants of DualTFR take 3rd/4th places of VOT2020RT and 4th places of VOT2020ST

For VOT21 challenge model weight download:

We provide the models of Five trackers SAMN, SAMN_DiMP, DualTFR, DualTFRst, DualTFRon here.

Note that the AlphaRefine (https://github.com/MasterBin-IIAU/AlphaRefine) model and SuperDiMP (https://github.com/visionml/pytracking) model are the same with the original author.

Tracker model quantity model name
SAMN 1 SAMN.tar
SAMN_DiMP 2 super_dimp.pth.tar, SAMN.tar
DualTFR 2 DualTFR.tar, ar.pth.tar
DualTFRst 2 DualTFRst.tar, ar.pth.tar
DualTFRon 2 DualTFRon.tar, ar.pth.tar

Models can be downloaded from BaiduNetDisk or GoogleDrive:

BaiduNetDisk:

https://pan.baidu.com/s/1RHA7HVlXtNEzYPGIjJbQ-g (sruh)

GoogleDrive:

https://drive.google.com/drive/folders/1Z61_mfh2vwzqDxejt5idBOgYhWOCZOr5?usp=sharing

Code will be released soon.

We present a simple Siamese-like Dual-branch network based on solely Transformer networks to learn about tracking features. Given a template and a search image, we divide them into non-overlapping image patches and extract a feature vector for each based on its matching results with others within an attention window. Then for each token, we estimate whether it contains the target object and the corresponding size. The prominent advantage of the approach is that the features are learned from matching, and ultimately, for matching. So the features are aligned with the subsequent object tracking task. The method achieves comparable results comparing to the best-performing methods which first use CNN to extract features and then use Transformer to fuse them. Without bells and whistles, it outperforms the state-of-the-art methods on GOT-10k and VOT2020 benchmarks. In addition, the method achieves real-time inference speed (about 40 fps).

Acknowledgments

Contacts

  • Fei Xie, School of Automation, Southeast University, China, [email protected], wechat: 372998044
Owner
phiphi
phiphi
A library for Deep Learning Implementations and utils

deeply A Deep Learning library Table of Contents Features Quick Start Usage License Features Python 2.7+ and Python 3.4+ compatible. Quick Start $ pip

Achilles Rasquinha 1 Dec 12, 2022
Facilitating Database Tuning with Hyper-ParameterOptimization: A Comprehensive Experimental Evaluation

A Comprehensive Experimental Evaluation for Database Configuration Tuning This is the source code to the paper "Facilitating Database Tuning with Hype

DAIR Lab 9 Oct 29, 2022
Editing a Conditional Radiance Field

Editing Conditional Radiance Fields Project | Paper | Video | Demo Editing Conditional Radiance Fields Steven Liu, Xiuming Zhang, Zhoutong Zhang, Rich

Steven Liu 216 Dec 30, 2022
SNE-RoadSeg in PyTorch, ECCV 2020

SNE-RoadSeg Introduction This is the official PyTorch implementation of SNE-RoadSeg: Incorporating Surface Normal Information into Semantic Segmentati

242 Dec 20, 2022
An API-first distributed deployment system of deep learning models using timeseries data to analyze and predict systems behaviour

Gordo Building thousands of models with timeseries data to monitor systems. Table of content About Examples Install Uninstall Developer manual How to

Equinor 26 Dec 27, 2022
RoMa: A lightweight library to deal with 3D rotations in PyTorch.

RoMa: A lightweight library to deal with 3D rotations in PyTorch. RoMa (which stands for Rotation Manipulation) provides differentiable mappings betwe

NAVER 90 Dec 27, 2022
Dataset and Source code of paper 'Enhancing Keyphrase Extraction from Academic Articles with their Reference Information'.

Enhancing Keyphrase Extraction from Academic Articles with their Reference Information Overview Dataset and code for paper "Enhancing Keyphrase Extrac

15 Nov 24, 2022
Deploy optimized transformer based models on Nvidia Triton server

🤗 Hugging Face Transformer submillisecond inference 🤯 and deployment on Nvidia Triton server Yes, you can perfom inference with transformer based mo

Lefebvre Sarrut Services 1.2k Jan 05, 2023
Sample code and notebooks for Vertex AI, the end-to-end machine learning platform on Google Cloud

Google Cloud Vertex AI Samples Welcome to the Google Cloud Vertex AI sample repository. Overview The repository contains notebooks and community conte

Google Cloud Platform 560 Dec 31, 2022
Yolo algorithm for detection + centroid tracker to track vehicles

Vehicle Tracking using Centroid tracker Algorithm used : Yolo algorithm for detection + centroid tracker to track vehicles Backend : opencv and python

6 Dec 21, 2022
ML model to classify between cats and dogs

Cats-and-dogs-classifier This is my first ML model which can classify between cats and dogs. Here the accuracy is around 75%, however , the accuracy c

Sharath V 4 Aug 20, 2021
Quantum-enhanced transformer neural network

Example of a Quantum-enhanced transformer neural network Get the code: git clone https://github.com/rdisipio/qtransformer.git cd qtransformer Create

Riccardo Di Sipio 61 Nov 08, 2022
This program creates a formatted excel file which highlights the undervalued stock according to Graham's number.

Over-and-Undervalued-Stocks Of Nepse Using Graham's Number Scrap the latest data using different websites and creates a formatted excel file that high

6 May 03, 2022
Change Detection in SAR Images Based on Multiscale Capsule Network

SAR_CD_MS_CapsNet Code for the paper "Change Detection in SAR Images Based on Multiscale Capsule Network" , IEEE Geoscience and Remote Sensing Letters

Feng Gao 21 Nov 29, 2022
[CVPR 2021] NormalFusion: Real-Time Acquisition of Surface Normals for High-Resolution RGB-D Scanning

NormalFusion: Real-Time Acquisition of Surface Normals for High-Resolution RGB-D Scanning Project Page | Paper | Supplemental material #1 | Supplement

KAIST VCLAB 49 Nov 24, 2022
Speech Emotion Recognition with Fusion of Acoustic- and Linguistic-Feature-Based Decisions

APSIPA-SER-with-A-and-T This code is the implementation of Speech Emotion Recognition (SER) with acoustic and linguistic features. The network model i

kenro515 3 Jan 04, 2023
HGCN: Harmonic Gated Compensation Network For Speech Enhancement

HGCN The official repo of "HGCN: Harmonic Gated Compensation Network For Speech Enhancement", which was accepted at ICASSP2022. How to use step1: Calc

ScorpioMiku 33 Nov 14, 2022
Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022)

Blockwise Sequential Model Learning Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022) For ins

2 Jun 17, 2022
TensorFlow tutorials and best practices.

Effective TensorFlow 2 Table of Contents Part I: TensorFlow 2 Fundamentals TensorFlow 2 Basics Broadcasting the good and the ugly Take advantage of th

Vahid Kazemi 8.7k Dec 31, 2022
🤗 Transformers: State-of-the-art Natural Language Processing for Pytorch, TensorFlow, and JAX.

English | 简体中文 | 繁體中文 | 한국어 State-of-the-art Natural Language Processing for Jax, PyTorch and TensorFlow 🤗 Transformers provides thousands of pretrai

Hugging Face 77.4k Jan 05, 2023