Predicting Event Memorability from Contextual Visual Semantics

Overview

Predicting-Event-Memorability-from-Contextual-Visual-Semantics

This repository contains pytorch implementation of five configurations in our paper "Predicting Event Memorability from Contextual Visual Semantics".

  1. Raw images are to be put in '../datasets/r3/images/'
  2. Train and validation (val) splits for different configurations are under '../datasets/r3/splits/'; the set of train_1.txt, val_1.txt, etc. contains image names and memorability scores for the respective split.
  3. Configurations of ablation study are with individual folders, e.g., './no_face', './no_activity', etc. './full_set' is for full configuration without removing features.
  4. Complete extrinsic features and the memory test outcome is available in 'R3_data.csv' file. Description of the features is given in 'R3_data_notes.txt'. Both can be downloaded together with the original image cues @ https://drive.google.com/drive/folders/1Bx_ePv7ui6DCIXkESCpoyuvd0H3B9o6d?usp=sharing
  5. The AMNet implementation is adpated from https://github.com/ok1zjf/AMNet

########################################################################################

To train AMNet and CEMNet_wt_AMNet:

python3 main.py --train-batch-size 128 --test-batch-size 128 --cnn ResNet50FC --dataset lamem --train-split train_1 --val-split val_1

To predict:

python3 main.py --cnn ResNet50FC --model-weights /path/to/model/weights_xx.pkl --eval-images /path/to/evl_images --csv-out memorabilities.txt

To train other models (ICNet, MLP, CEMNet_wt_ICNet):

[Go the the respective folder, e.g., '../ICNet']

python main.py

To predict (please select corresponding splits and model in predict.py):

python predict.py

[Where necessary, change Dataset.py to the corresponding directory of split]

########################################################################################

System configuration:

platform: UBUNTU 16.04

GPU: GeForce GTX 1080

CUDA:9.0

########################################################################################

Python packages:

python 3.5.6

pytorch 0.2.0

Torchvison 0.1.9

Numpy 1.15.2

Opencv 3.1.0

PIL 6.1.0

########################################################################################

To cite the paper: Xu Q., Fang F., del Molino A.G, Subbaraju V., Lim J.H., Predicting Event Memorability from Contextual Visual Semantics, NeurIPS 2021.

If you have any questions, please feel free to contact Dr Xu Qianli: [email protected]

PyTorch code for the ICCV'21 paper: "Always Be Dreaming: A New Approach for Class-Incremental Learning"

Always Be Dreaming: A New Approach for Data-Free Class-Incremental Learning PyTorch code for the ICCV 2021 paper: Always Be Dreaming: A New Approach f

49 Dec 21, 2022
Deep Neural Networks Improve Radiologists' Performance in Breast Cancer Screening

Deep Neural Networks Improve Radiologists' Performance in Breast Cancer Screening Introduction This is an implementation of the model used for breast

757 Dec 30, 2022
MADE (Masked Autoencoder Density Estimation) implementation in PyTorch

pytorch-made This code is an implementation of "Masked AutoEncoder for Density Estimation" by Germain et al., 2015. The core idea is that you can turn

Andrej 498 Dec 30, 2022
Simple torch.nn.module implementation of Alias-Free-GAN style filter and resample

Alias-Free-Torch Simple torch module implementation of Alias-Free GAN. This repository including Alias-Free GAN style lowpass sinc filter @filter.py A

이준혁(Junhyeok Lee) 64 Dec 22, 2022
Implementation of BI-RADS-BERT & The Advantages of Section Tokenization.

BI-RADS BERT Implementation of BI-RADS-BERT & The Advantages of Section Tokenization. This implementation could be used on other radiology in house co

1 May 17, 2022
Code for pre-training CharacterBERT models (as well as BERT models).

Pre-training CharacterBERT (and BERT) This is a repository for pre-training BERT and CharacterBERT. DISCLAIMER: The code was largely adapted from an o

Hicham EL BOUKKOURI 31 Dec 05, 2022
Dataset and Code for the paper "DepthTrack: Unveiling the Power of RGBD Tracking" (ICCV2021), and "Depth-only Object Tracking" (BMVC2021)

DeT and DOT Code and datasets for "DepthTrack: Unveiling the Power of RGBD Tracking" (ICCV2021) "Depth-only Object Tracking" (BMVC2021) @InProceedings

Yan Song 55 Dec 15, 2022
Keyword-BERT: Keyword-Attentive Deep Semantic Matching

project discription An implementation of the Keyword-BERT model mentioned in my paper Keyword-Attentive Deep Semantic Matching (Plz cite this github r

1 Nov 14, 2021
Corgis are the cutest creatures; have 30K of them!

corgi-net This is a dataset of corgi images scraped from the corgi subreddit. After filtering using an ImageNet classifier, the training set consists

Alex Nichol 6 Dec 24, 2022
Weighted K Nearest Neighbors (kNN) algorithm implemented on python from scratch.

kNN_From_Scratch I implemented the k nearest neighbors (kNN) classification algorithm on python. This algorithm is used to predict the classes of new

1 Dec 14, 2021
LSTM and QRNN Language Model Toolkit for PyTorch

LSTM and QRNN Language Model Toolkit This repository contains the code used for two Salesforce Research papers: Regularizing and Optimizing LSTM Langu

Salesforce 1.9k Jan 08, 2023
Collect super-resolution related papers, data, repositories

Collect super-resolution related papers, data, repositories

WangChaofeng 1.7k Jan 03, 2023
An addon uses SMPL's poses and global translation to drive cartoon character in Blender.

Blender addon for driving character The addon drives the cartoon character by passing SMPL's poses and global translation into model's armature in Ble

犹在镜中 153 Dec 14, 2022
Peek-a-Boo: What (More) is Disguised in a Randomly Weighted Neural Network, and How to Find It Efficiently

Peek-a-Boo: What (More) is Disguised in a Randomly Weighted Neural Network, and How to Find It Efficiently This repository is the official implementat

VITA 4 Dec 20, 2022
Unofficial implementation of PatchCore anomaly detection

PatchCore anomaly detection Unofficial implementation of PatchCore(new SOTA) anomaly detection model Original Paper : Towards Total Recall in Industri

Changwoo Ha 268 Dec 22, 2022
Generalized Data Weighting via Class-level Gradient Manipulation

Generalized Data Weighting via Class-level Gradient Manipulation This repository is the official implementation of Generalized Data Weighting via Clas

18 Nov 12, 2022
Experimental solutions to selected exercises from the book [Advances in Financial Machine Learning by Marcos Lopez De Prado]

Advances in Financial Machine Learning Exercises Experimental solutions to selected exercises from the book Advances in Financial Machine Learning by

Brian 1.4k Jan 04, 2023
Space-event-trace - Tracing service for spaceteam events

space-event-trace Tracing service for TU Wien Spaceteam events. This service is

TU Wien Space Team 2 Jan 04, 2022
ONNX-PackNet-SfM: Python scripts for performing monocular depth estimation using the PackNet-SfM model in ONNX

Python scripts for performing monocular depth estimation using the PackNet-SfM model in ONNX

Ibai Gorordo 14 Dec 09, 2022
A NSFW content filter.

Project_Nfilter A NSFW content filter. With a motive of minimizing the spreads and leakage of NSFW contents on internet and access to others devices ,

1 Jan 20, 2022