A Semi-Supervised GAN Architecture for Video Classification

P. Ghadekar, Dhruva Khanwelkar, Nirvisha Soni, Harsh More, Juhi Rajani, Chirag Vaswani
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Abstract

In recent years, several supervised deep-learning architectures have achieved state-of-the art accuracies in video-classification. However, they demand a considerable amount of annotated data which can be both cost and resource intensive. This study proposes a Semi-Supervised GAN architecture to efficiently perform classification on video datasets with a small percentage of labelled data. While the Generative Adversarial Network (GAN) architecture is known for its generative ability, we harness the discriminative property of this network instead for the classification of videos. The proposed model leverages the features extracted from the unlabelled data to classify the labelled videos. Results show that the proposed approach achieves 46% accuracy with just 5% labelled videos, reaching up to 62% when 50% of the videos are labelled. These results are a significant improvement over a standard supervised approach and show a promising aspect in the field of Semi-Supervised Learning domain.
一种用于视频分类的半监督GAN结构
近年来,一些有监督的深度学习架构已经在视频分类中达到了最先进的精度。然而,它们需要大量带注释的数据,这可能是成本和资源密集型的。本研究提出了一种半监督GAN架构,以有效地对具有小比例标记数据的视频数据集进行分类。虽然生成对抗网络(GAN)架构以其生成能力而闻名,但我们利用该网络的判别特性来对视频进行分类。该模型利用从未标记数据中提取的特征对标记的视频进行分类。结果表明,该方法在标记5%的视频时达到46%的准确率,在标记50%的视频时达到62%的准确率。这些结果是对标准监督方法的重大改进,显示了半监督学习领域的一个有前途的方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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