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Multiple Feature Fusion Based on Co-Training Approach and Time Regularization for Place Classification in Wearable Video

机译:基于协同训练和时间正则化的多特征融合可穿戴视频位置分类

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The analysis of video acquired with a wearable camera is a challenge that multimedia community is facing with the proliferation of such sensors in various applications. In this paper, we focus on the problem of automatic visual place recognition in a weakly constrained environment, targeting the indexing of video streams by topological place recognition. We propose to combine several machine learning approaches in a time regularized framework for image-based place recognition indoors. The framework combines the power of multiple visual cues and integrates the temporal continuity information of video. We extend it with computationally efficient semisupervised method leveraging unlabeled video sequences for an improved indexing performance. The proposed approach was applied on challenging video corpora. Experiments on a public and a real-world video sequence databases show the gain brought by the different stages of the method.
机译:随着可穿戴式摄像机获取的视频的分析,多媒体社区正面临着各种应用中此类传感器激增的挑战。在本文中,我们关注于弱约束环境中的自动视觉位置识别问题,其目标是通过拓扑位置识别对视频流进行索引。我们建议在时间正则化框架中结合几种机器学习方法,以在室内基于图像的位置识别。该框架结合了多种视觉提示的力量,并整合了视频的时间连续性信息。我们利用计算有效的半监督方法扩展了它,该方法利用了未标记的视频序列来提高索引性能。所提出的方法应用于具有挑战性的视频语料库。在公共和现实世界的视频序列数据库上进行的实验表明,该方法的不同阶段带来了收益。

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