[AAAI 2022] Negative Sample Matters: A Renaissance of Metric Learning for Temporal Grounding

Overview

[AAAI 2022] Negative Sample Matters: A Renaissance of Metric Learning for Temporal Grounding

Official Pytorch implementation of Negative Sample Matters: A Renaissance of Metric Learning for Temporal Grounding (AAAI 2022).

Paper is at https://arxiv.org/pdf/2109.04872.pdf.

Paper explanation in Zhihu (in Chinese) is at https://zhuanlan.zhihu.com/p/446203594.

Abstract

Temporal grounding aims to localize a video moment which is semantically aligned with a given natural language query. Existing methods typically apply a detection or regression pipeline on the fused representation with the research focus on designing complicated prediction heads or fusion strategies. Instead, from a perspective on temporal grounding as a metric-learning problem, we present a Mutual Matching Network (MMN), to directly model the similarity between language queries and video moments in a joint embedding space. This new metric-learning framework enables fully exploiting negative samples from two new aspects: constructing negative cross-modal pairs in a mutual matching scheme and mining negative pairs across different videos. These new negative samples could enhance the joint representation learning of two modalities via cross-modal mutual matching to maximize their mutual information. Experiments show that our MMN achieves highly competitive performance compared with the state-of-the-art methods on four video grounding benchmarks. Based on MMN, we present a winner solution for the HC-STVG challenge of the 3rd PIC workshop. This suggests that metric learning is still a promising method for temporal grounding via capturing the essential cross-modal correlation in a joint embedding space.

Updates

Dec, 2021 - We uploaded the code and trained weights for Charades-STA, ActivityNet-Captions and TACoS datasets.

Todo: The code for spatio-temporal video grounding (HC-STVG dataset) will be available soon.

Datasets

  • Download the video feature and the groundtruth provided by 2D-TAN.
  • Extract and put them in a dataset folder in the same directory as train_net.py. For configurations of feature/groundtruth's paths, please refer to ./mmn/config/paths_catalog.py. (ann_file is annotation, feat_file is the video feature)

Dependencies

Our code is developed on the third-party implementation of 2D-TAN, so we have similar dependencies with it, such as:

yacs h5py terminaltables tqdm pytorch transformers 

Quick Start

We provide scripts for simplifying training and inference. For training our model, we provide a script for each dataset (e.g., ./scripts/tacos_train.sh). For evaluating the performance, we provide ./scripts/eval.sh.

For example, for training model in TACoS dataset in tacos_train.sh, we need to select the right config in config and decide the GPU by yourself in gpus (gpu id in your server) and gpun (total number of gpus).

# find all configs in configs/
config=pool_tacos_128x128_k5l8
# set your gpu id
gpus=0,1
# number of gpus
gpun=2
# please modify it with different value (e.g., 127.0.0.2, 29502) when you run multi mmn task on the same machine
master_addr=127.0.0.3
master_port=29511

Similarly, to evaluate the model, just change the information in eval.sh. Our trained weights for three datasets are in the Google Drive.

Citation

If you find our code useful, please generously cite our paper. (AAAI version bibtex will be updated later)

@article{DBLP:journals/corr/abs-2109-04872,
  author    = {Zhenzhi Wang and
               Limin Wang and
               Tao Wu and
               Tianhao Li and
               Gangshan Wu},
  title     = {Negative Sample Matters: {A} Renaissance of Metric Learning for Temporal
               Grounding},
  journal   = {CoRR},
  volume    = {abs/2109.04872},
  year      = {2021}
}

Contact

For any question, please raise an issue (preferred) or contact

Zhenzhi Wang: [email protected]

Acknowledgement

We appreciate 2D-TAN for video feature and configurations, and the third-party implementation of 2D-TAN for its implementation with DistributedDataParallel. Disclaimer: the performance gain of this third-party implementation is due to a tiny mistake of adding val set into training, yet our reproduced result is similar to the reported result in 2D-TAN paper.

Owner
Multimedia Computing Group, Nanjing University
Multimedia Computing Group, Nanjing University
Improving Object Detection by Estimating Bounding Box Quality Accurately

Improving Object Detection by Estimating Bounding Box Quality Accurately Abstrac

2 Apr 14, 2022
Pytorch implementation of the paper DocEnTr: An End-to-End Document Image Enhancement Transformer.

DocEnTR Description Pytorch implementation of the paper DocEnTr: An End-to-End Document Image Enhancement Transformer. This model is implemented on to

Mohamed Ali Souibgui 74 Jan 07, 2023
D2Go is a toolkit for efficient deep learning

D2Go D2Go is a production ready software system from FacebookResearch, which supports end-to-end model training and deployment for mobile platforms. W

Facebook Research 744 Jan 04, 2023
PyTorch implementation for "Sharpness-aware Quantization for Deep Neural Networks".

Sharpness-aware Quantization for Deep Neural Networks Recent Update 2021.11.23: We release the source code of SAQ. Setup the environments Clone the re

Zhuang AI Group 30 Dec 19, 2022
Implementation of "StrengthNet: Deep Learning-based Emotion Strength Assessment for Emotional Speech Synthesis"

StrengthNet Implementation of "StrengthNet: Deep Learning-based Emotion Strength Assessment for Emotional Speech Synthesis" https://arxiv.org/abs/2110

RuiLiu 65 Dec 20, 2022
A python script to dump all the challenges locally of a CTFd-based Capture the Flag.

A python script to dump all the challenges locally of a CTFd-based Capture the Flag. Features Connects and logins to a remote CTFd instance. Dumps all

Podalirius 77 Dec 07, 2022
Deep Learning Pipelines for Apache Spark

Deep Learning Pipelines for Apache Spark The repo only contains HorovodRunner code for local CI and API docs. To use HorovodRunner for distributed tra

Databricks 2k Jan 08, 2023
Rate-limit-semaphore - Semaphore implementation with rate limit restriction for async-style (any core)

Rate Limit Semaphore Rate limit semaphore for async-style (any core) There are t

Yan Kurbatov 4 Jun 21, 2022
Implementation of E(n)-Transformer, which extends the ideas of Welling's E(n)-Equivariant Graph Neural Network to attention

E(n)-Equivariant Transformer (wip) Implementation of E(n)-Equivariant Transformer, which extends the ideas from Welling's E(n)-Equivariant G

Phil Wang 132 Jan 02, 2023
A Structured Self-attentive Sentence Embedding

Structured Self-attentive sentence embeddings Implementation for the paper A Structured Self-Attentive Sentence Embedding, which was published in ICLR

Kaushal Shetty 488 Nov 28, 2022
Amazon Forest Computer Vision: Satellite Image tagging code using PyTorch / Keras with lots of PyTorch tricks

Amazon Forest Computer Vision Satellite Image tagging code using PyTorch / Keras Here is a sample of images we had to work with Source: https://www.ka

Mamy Ratsimbazafy 359 Jan 05, 2023
Implementation of Perceiver, General Perception with Iterative Attention, in Pytorch

Perceiver - Pytorch Implementation of Perceiver, General Perception with Iterative Attention, in Pytorch Install $ pip install perceiver-pytorch Usage

Phil Wang 876 Dec 29, 2022
A GPT, made only of MLPs, in Jax

MLP GPT - Jax (wip) A GPT, made only of MLPs, in Jax. The specific MLP to be used are gMLPs with the Spatial Gating Units. Working Pytorch implementat

Phil Wang 53 Sep 27, 2022
Neural Cellular Automata + CLIP

🧠 Text-2-Cellular Automata Using Neural Cellular Automata + OpenAI CLIP (Work in progress) Examples Text Prompt: Cthulu is watching cthulu_is_watchin

Mainak Deb 21 Dec 19, 2022
A general framework for deep learning experiments under PyTorch based on pytorch-lightning

torchx Torchx is a general framework for deep learning experiments under PyTorch based on pytorch-lightning. TODO list gan-like training wrapper text

Yingtian Liu 6 Mar 17, 2022
SLAMP: Stochastic Latent Appearance and Motion Prediction

SLAMP: Stochastic Latent Appearance and Motion Prediction Official implementation of the paper SLAMP: Stochastic Latent Appearance and Motion Predicti

Kaan Akan 34 Dec 08, 2022
Improving Calibration for Long-Tailed Recognition (CVPR2021)

MiSLAS Improving Calibration for Long-Tailed Recognition Authors: Zhisheng Zhong, Jiequan Cui, Shu Liu, Jiaya Jia [arXiv] [slide] [BibTeX] Introductio

DV Lab 116 Dec 20, 2022
Information Gain Filtration (IGF) is a method for filtering domain-specific data during language model finetuning. IGF shows significant improvements over baseline fine-tuning without data filtration.

Information Gain Filtration Information Gain Filtration (IGF) is a method for filtering domain-specific data during language model finetuning. IGF sho

4 Jul 28, 2022
Does Oversizing Improve Prosumer Profitability in a Flexibility Market? - A Sensitivity Analysis using PV-battery System

Does Oversizing Improve Prosumer Profitability in a Flexibility Market? - A Sensitivity Analysis using PV-battery System The possibilities to involve

Babu Kumaran Nalini 0 Nov 19, 2021
PyTorch implementation of DeepLab v2 on COCO-Stuff / PASCAL VOC

DeepLab with PyTorch This is an unofficial PyTorch implementation of DeepLab v2 [1] with a ResNet-101 backbone. COCO-Stuff dataset [2] and PASCAL VOC

Kazuto Nakashima 995 Jan 08, 2023