Add paper and GitHub links to dataset card

#1
by nielsr HF Staff - opened
Files changed (1) hide show
  1. README.md +17 -7
README.md CHANGED
@@ -1,12 +1,20 @@
1
  ---
2
  license: cc-by-4.0
 
 
3
  size_categories:
4
  - 1K<n<10K
 
 
 
 
5
  ---
6
 
7
  # CVPR-NTIRE Video Saliency Prediction Challenge 2026
8
 
9
- [![Page](https://img.shields.io/badge/Challenge-Page-blue)](https://www.codabench.org/competitions/12842/)
 
 
10
 
11
  ## Dataset
12
 
@@ -18,7 +26,7 @@ We provide a novel audio-visual mouse saliency dataset with the following key-fe
18
  * Mouse fixations from **>5000** observers (**>70** per video);
19
  * License: **CC-BY**;
20
 
21
- File structure:
22
  1) `Videos.zip` — 2000 (1200 Train + 800 Test) .mp4 video (kindly reminder: videos contain an audio stream and users watched the video with the sound turned ON!)
23
 
24
  2) `TrainTestSplit.json` — in this JSON we provide Train/Public Test/Private Test split of all videos
@@ -40,21 +48,22 @@ File structure:
40
 
41
  ### Environment Setup
42
 
43
- ```
44
  conda create -n saliency python=3.10.19
45
  conda activate saliency
46
  pip install numpy==2.2.6 opencv-python-headless==4.12.0.88 tqdm==4.67.1
47
  conda install ffmpeg=4.4.2 -c conda-forge
48
  ```
 
49
  ### Run Evaluation
50
  Archives with videos were accepted from challenge participants as submissions and scored using the same pipeline as in `bench.py`.
51
 
52
  Usage example:
53
 
54
  1) Check that your predictions match the structure and names of the baseline SampleSubmission.zip submission.
55
- 2) Install `pip install -r requirments.txt`, `conda install ffmpeg`
56
- 3) Download and extract `SaliencyTest.zip`, `FixationsTest.zip`, and `TrainTestSplit.json` files from the dataset page
57
- 4) Run `python bench.py` with flags:
58
  * `--model_video_predictions ./SampleSubmission` — folder with predicted saliency videos
59
  * `--model_extracted_frames ./SampleSubmission-Frames` — folder to store prediction frames (should not exist at launch time), requires ~170 GB of free space
60
  * `--gt_video_predictions ./SaliencyTest/Test` — folder from dataset page with gt saliency videos
@@ -63,6 +72,7 @@ Usage example:
63
  * `--split_json ./TrainTestSplit.json` — JSON from dataset page with names splitting
64
  * `--results_json ./results.json` — path to the output results json
65
  * `--mode public_test` — public_test/private_test subsets
66
- 5) The result you get will be available following `results.json` path
 
67
 
68
  [![Challenges](https://img.shields.io/badge/Challenges-NTIRE%202026-orange)](https://www.cvlai.net/ntire/2026/)
 
1
  ---
2
  license: cc-by-4.0
3
+ task_categories:
4
+ - other
5
  size_categories:
6
  - 1K<n<10K
7
+ tags:
8
+ - video-saliency-prediction
9
+ - ntire-2026
10
+ - computer-vision
11
  ---
12
 
13
  # CVPR-NTIRE Video Saliency Prediction Challenge 2026
14
 
15
+ This repository contains the dataset for the NTIRE 2026 Challenge on Video Saliency Prediction, as presented in the paper [NTIRE 2026 Challenge on Video Saliency Prediction: Methods and Results](https://huggingface.co/papers/2604.14816).
16
+
17
+ [Paper](https://huggingface.co/papers/2604.14816) | [GitHub](https://github.com/msu-video-group/NTIRE26_Saliency_Prediction) | [Project Page](https://cvlai.net/ntire/2026/) | [![Challenge Page](https://img.shields.io/badge/Challenge-Page-blue)](https://www.codabench.org/competitions/12842/)
18
 
19
  ## Dataset
20
 
 
26
  * Mouse fixations from **>5000** observers (**>70** per video);
27
  * License: **CC-BY**;
28
 
29
+ ### File structure:
30
  1) `Videos.zip` — 2000 (1200 Train + 800 Test) .mp4 video (kindly reminder: videos contain an audio stream and users watched the video with the sound turned ON!)
31
 
32
  2) `TrainTestSplit.json` — in this JSON we provide Train/Public Test/Private Test split of all videos
 
48
 
49
  ### Environment Setup
50
 
51
+ ```bash
52
  conda create -n saliency python=3.10.19
53
  conda activate saliency
54
  pip install numpy==2.2.6 opencv-python-headless==4.12.0.88 tqdm==4.67.1
55
  conda install ffmpeg=4.4.2 -c conda-forge
56
  ```
57
+
58
  ### Run Evaluation
59
  Archives with videos were accepted from challenge participants as submissions and scored using the same pipeline as in `bench.py`.
60
 
61
  Usage example:
62
 
63
  1) Check that your predictions match the structure and names of the baseline SampleSubmission.zip submission.
64
+ 2) Install `pip install -r requirements.txt`, `conda install ffmpeg`
65
+ 3) Download and extract `SaliencyTest.zip`, `FixationsTest.zip`, and `TrainTestSplit.json` files from the dataset page.
66
+ 4) Run `python bench.py` (found in the GitHub repo) with flags:
67
  * `--model_video_predictions ./SampleSubmission` — folder with predicted saliency videos
68
  * `--model_extracted_frames ./SampleSubmission-Frames` — folder to store prediction frames (should not exist at launch time), requires ~170 GB of free space
69
  * `--gt_video_predictions ./SaliencyTest/Test` — folder from dataset page with gt saliency videos
 
72
  * `--split_json ./TrainTestSplit.json` — JSON from dataset page with names splitting
73
  * `--results_json ./results.json` — path to the output results json
74
  * `--mode public_test` — public_test/private_test subsets
75
+
76
+ 5) The result you get will be available following `results.json` path.
77
 
78
  [![Challenges](https://img.shields.io/badge/Challenges-NTIRE%202026-orange)](https://www.cvlai.net/ntire/2026/)