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Related Experiment Video

Updated: Oct 16, 2025

Combining Eye-tracking Data with an Analysis of Video Content from Free-viewing a Video of a Walk in an Urban Park Environment
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Combining Eye-tracking Data with an Analysis of Video Content from Free-viewing a Video of a Walk in an Urban Park Environment

Published on: May 7, 2019

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Generalized Few-Shot Video Classification With Video Retrieval and Feature Generation.

Yongqin Xian, Bruno Korbar, Matthijs Douze

    IEEE Transactions on Pattern Analysis and Machine Intelligence
    |October 15, 2021
    PubMed
    Summary
    This summary is machine-generated.

    This study enhances few-shot video classification by learning spatiotemporal features with 3D CNNs. Novel methods using tag retrieval and generative adversarial networks improve performance on realistic benchmarks.

    Related Experiment Videos

    Last Updated: Oct 16, 2025

    Combining Eye-tracking Data with an Analysis of Video Content from Free-viewing a Video of a Walk in an Urban Park Environment
    08:25

    Combining Eye-tracking Data with an Analysis of Video Content from Free-viewing a Video of a Walk in an Urban Park Environment

    Published on: May 7, 2019

    9.2K

    Area of Science:

    • Computer Science
    • Artificial Intelligence
    • Machine Learning

    Background:

    • Few-shot learning (FSL) excels in image recognition but remains underdeveloped for video classification.
    • Existing methods often overlook the critical role of robust video feature learning.
    • Spatiotemporal feature extraction is crucial for accurate video understanding.

    Purpose of the Study:

    • To advance few-shot video classification by developing effective spatiotemporal feature learning techniques.
    • To introduce novel approaches for few-shot video classification that reduce reliance on labeled data.
    • To create more realistic benchmarks for evaluating few-shot and generalized few-shot video classification.

    Main Methods:

    • A two-stage approach involving 3D Convolutional Neural Networks (CNNs) for spatiotemporal feature learning on base classes.
    • Leveraging tag-labeled videos and visual similarity for data augmentation in few-shot learning.
    • Employing generative adversarial networks (GANs) to synthesize video features from semantic embeddings for novel classes.

    Main Results:

    • The baseline 3D CNN approach significantly outperformed prior methods by over 20 points on existing benchmarks.
    • Novel methods utilizing tag retrieval and GANs further boosted performance, especially on new, more realistic benchmarks.
    • The proposed methods demonstrated substantial improvements in both few-shot and generalized few-shot learning scenarios.

    Conclusions:

    • Effective spatiotemporal feature learning using 3D CNNs is vital for advancing few-shot video classification.
    • Leveraging external data and generative models offers promising avenues to overcome data limitations in few-shot video tasks.
    • The developed benchmarks provide a more comprehensive evaluation of FSL algorithms in realistic settings.