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Main Authors: Le, Huy M., Nguyen, Dat Tien, Nguyen, Phuc Binh, Tran, Gia Bao Le, Thien, Phu Truong, Dinh, Cuong, Nguyen, Minh, Nguyen, Nga, Nguyen, Thuy T. N., Nguyen, Tan Nhat, Nguyen, Binh T.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.12255
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author Le, Huy M.
Nguyen, Dat Tien
Nguyen, Phuc Binh
Tran, Gia Bao Le
Thien, Phu Truong
Dinh, Cuong
Nguyen, Minh
Nguyen, Nga
Nguyen, Thuy T. N.
Nguyen, Tan Nhat
Nguyen, Binh T.
author_facet Le, Huy M.
Nguyen, Dat Tien
Nguyen, Phuc Binh
Tran, Gia Bao Le
Thien, Phu Truong
Dinh, Cuong
Nguyen, Minh
Nguyen, Nga
Nguyen, Thuy T. N.
Nguyen, Tan Nhat
Nguyen, Binh T.
contents The Video Browser Showdown (VBS) challenges systems to deliver accurate results under strict time constraints. To meet this demand, we present Fusionista2.0, a streamlined video retrieval system optimized for speed and usability. All core modules were re-engineered for efficiency: preprocessing now relies on ffmpeg for fast keyframe extraction, optical character recognition uses Vintern-1B-v3.5 for robust multilingual text recognition, and automatic speech recognition employs faster-whisper for real-time transcription. For question answering, lightweight vision-language models provide quick responses without the heavy cost of large models. Beyond these technical upgrades, Fusionista2.0 introduces a redesigned user interface with improved responsiveness, accessibility, and workflow efficiency, enabling even non-expert users to retrieve relevant content rapidly. Evaluations demonstrate that retrieval time was reduced by up to 75% while accuracy and user satisfaction both increased, confirming Fusionista2.0 as a competitive and user-friendly system for large-scale video search.
format Preprint
id arxiv_https___arxiv_org_abs_2511_12255
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Fusionista2.0: Efficiency Retrieval System for Large-Scale Datasets
Le, Huy M.
Nguyen, Dat Tien
Nguyen, Phuc Binh
Tran, Gia Bao Le
Thien, Phu Truong
Dinh, Cuong
Nguyen, Minh
Nguyen, Nga
Nguyen, Thuy T. N.
Nguyen, Tan Nhat
Nguyen, Binh T.
Computer Vision and Pattern Recognition
The Video Browser Showdown (VBS) challenges systems to deliver accurate results under strict time constraints. To meet this demand, we present Fusionista2.0, a streamlined video retrieval system optimized for speed and usability. All core modules were re-engineered for efficiency: preprocessing now relies on ffmpeg for fast keyframe extraction, optical character recognition uses Vintern-1B-v3.5 for robust multilingual text recognition, and automatic speech recognition employs faster-whisper for real-time transcription. For question answering, lightweight vision-language models provide quick responses without the heavy cost of large models. Beyond these technical upgrades, Fusionista2.0 introduces a redesigned user interface with improved responsiveness, accessibility, and workflow efficiency, enabling even non-expert users to retrieve relevant content rapidly. Evaluations demonstrate that retrieval time was reduced by up to 75% while accuracy and user satisfaction both increased, confirming Fusionista2.0 as a competitive and user-friendly system for large-scale video search.
title Fusionista2.0: Efficiency Retrieval System for Large-Scale Datasets
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.12255