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TRINITY Dataset
TRINITY accompanies our ECCV 2026 paper "TRINITY: A Multi-Perspective Benchmark for Personal-Style Video Highlight Detection" and provides precomputed video features for three complementary highlight-detection perspectives: Emotion, Event, and Nature.
Traditional highlight detection assumes a single, event-centric notion of saliency, which fails to generalize to unconstrained personal videos where highlights are heterogeneous and perspective-dependent. TRINITY decomposes highlight saliency into three complementary dimensions within a unified temporal framework:
- Event — event-driven semantic peaks, adopting the replay-based annotations from Mr. HiSum.
- Emotion — affective facial moments, annotated via a scalable two-stage automatic pipeline (frame-level facial expression recognition + multimodal LLM verification).
- Nature — aesthetic scenic highlights, annotated via scenic localization (person/landscape detection) followed by frame-level aesthetic scoring. Features are sampled at 1 FPS, same as Event.
The three perspectives are intentionally complementary rather than redundant (cross-perspective IoU as low as 0.002–0.052 on Mr. HiSum), enabling structured analysis of heterogeneous highlight patterns beyond the traditional single-perspective paradigm. This repository provides only the precomputed CLIP ViT-B/32 features (and Emotion ground-truth labels) used in the paper's experiments — see the paper for full annotation pipeline details.
Subsets
| Subset | Feature granularity | Feature dim | Dtype | Ground truth |
|---|---|---|---|---|
| Emotion | 5-second averaged windows | 512 | float16 | binary highlight labels + segment metadata (separate archive) |
| Event | 1 FPS | 512 | float32 | frame-level replay-saliency scores (separate archive) |
| Nature | 1 FPS | 512 | float16 | frame-level aesthetic scores (separate archive); includes _aug augmented variants |
All features are stored per-clip as individual .npz files, packaged into numbered zip shards for download.
Emotion
emotion/emotion_feature_{1..4}.zip— per-clip feature files, each.npzwith keyfeaturesof shape(T, 512).emotion/emotion_gt.zip— matching ground-truth files, each.npzcontaining:labels: shape(T,), float32clip_start,clip_end,clip_duration: clip timing infonum_segments,segment_duration: segmentation infois_negative: bool flag for negative samples
emotion/emotion_split.json—train_keys/val_keys/test_keyslisting the relative.npzfilenames for each split (11,352 / 1,615 / 3,290 clips).
Feature and ground-truth files share the same filename across the two archive sets.
Event
event/event_features_part_{1..145}.zip— per-video feature files, each.npzwith keydataof shape(T, 512), float32, sampled at 1 FPS.event/event_gt_part_1.zip— matching ground-truth files, each.npzwith keydataof shape(T,), float64, giving the frame-level replay-based saliency score (one value per 1-second frame, aligned with the feature sequence).event/mr_hisum_split_original.json—train_keys/val_keys/test_keys(27,892 / 2,000 / 2,000 videos).
Feature and ground-truth files share the same filename (e.g. video_1.npz) across the two archive sets.
Nature
nature/nature_feat_part_{1..32}.zip— per-video feature files, each.npzwith keyfeaturesof shape(T, 512), sampled at 1 FPS. Files suffixed_augare augmented variants of their base video.nature/nature_gt_part_1.zip— matching ground-truth files, each.jsoncontaining a list of per-frame aesthetic saliency scores in[0, 1], aligned with the feature sequence.nature/nature_split.json—train_keys/val_keys/test_keys(12,763 / 874 / 1,903 clips).
Feature and ground-truth files share the same base filename (e.g. --rd0X_LQCo.npz / --rd0X_LQCo.json) across the two archive sets.
Usage
Download and unzip the shards for the subset(s) you need:
hf download vanilladucky/TRINITY --repo-type dataset --local-dir ./TRINITY
cd TRINITY/nature && for f in *.zip; do unzip -q "$f" -d nature_feat; done
Load a feature file:
import numpy as np
feat = np.load("nature_feat/--rd0X_LQCo.npz")["features"] # (T, 512)
Citation
If you use this dataset, please cite our paper:
@inproceedings{chen2026trinity,
title = {{TRINITY}: A Multi-Perspective Benchmark for Personal-Style Video Highlight Detection},
author = {Chen Qianqian and Kim Hyun Bin and Wijaya Denzel Elden and Yi Yang and Liu Bo and Ding Yangkai},
booktitle = {European Conference on Computer Vision (ECCV)},
year = {2026}
}
License
Released under CC BY 4.0. Underlying source videos belong to their original datasets/owners (e.g. Mr. HiSum, YouTube); this release distributes only extracted features and derived annotations.
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