Scene recognition based on extreme learning machine for digital video archive management

Dongsheng Cheng, Wenjing Yu, Xiaoling He, Shilong Ni, Junyu Lv, Weibo Zeng, Yuanlong Yu
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引用次数: 1

Abstract

Video is a rich media widely used in many of our daily life applications like education, entertainment, surveillance, etc. In order to retrieve rapidly, it is necessary to establish digital archive for storing these videos. However, it is not realistic to store vast amounts of video data into digital archive artificially. This paper proposes a new method for the task of video digital archive management by employing scene recognition technology based on extreme learning machine (ELM). This paper only focuses on scene recognition technology which is the key step of digital video archive management. Dense scale invariant feature transform (dense SIFT) features are used as features in this proposed method. The 15-Scenes dataset with more than 4000 images is used. Experimental results have shown that this proposed method achieves not only high recognition accuracy but also extremely low computational cost.
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基于极限学习机的数字视频档案管理场景识别
视频是一种丰富的媒体,广泛应用于我们的日常生活中,如教育、娱乐、监控等。为了快速检索,有必要建立数字档案来存储这些视频。然而,将海量视频数据人工存储为数字档案是不现实的。本文提出了一种基于极限学习机(ELM)的场景识别技术的视频数字档案管理新方法。本文重点研究了数字视频档案管理的关键环节——场景识别技术。该方法采用密集尺度不变特征变换(Dense SIFT)特征作为特征。使用超过4000张图像的15场景数据集。实验结果表明,该方法不仅具有较高的识别精度,而且计算成本极低。
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