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Adaptive and robust feature selection for low bitrate mobile augmented reality applications

机译:适用于低比特率移动增强现实应用的自适应且强大的功能选择

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Mobile augmented reality applications rely on automatically matching a captured visual scene to an image in a database. This is typically achieved by deriving a set of features for the captured image, transmitting them through a network and then matching with features derived for a database of reference images. A fundamental problem is to select as few and robust features as possible such that the matching accuracy is invariant to distortions caused by camera capture whilst minimising the bit rate required for their transmission. In this paper, novel feature selection methods are proposed, based on the entropy of the image content, entropy of extracted features and the Discrete Cosine Transformation (DCT) coefficients. The methods proposed in the descriptor domain and DCT domain achieve better matching accuracy under low bit rate transmission than start-of-the-art peak based feature selection used within the MPEG-7 Compact Descriptor for Visual Search (CDVS). This is verified from image retrieval experiments and results for a realistic dataset with complex real world capturing distortion. Results show that the proposed method can improve the matching accuracy for various detectors and also indicate that the feature selection can not only achieves low bit rate transmission but also results in a higher matching accuracy than using all features when applied to distorted images. Hence, even if all the features can be transmitted in high transmission bandwidth scenarios, feature selection should still be applied to the distorted query image to ensure high matching accuracy.
机译:移动增强现实应用程序依赖于将捕获的视觉场景与数据库中的图像自动匹配。通常,这是通过为捕获的图像派生一组特征,通过网络传输它们,然后与为参考图像数据库得出的特征进行匹配来实现的。一个基本的问题是选择尽可能少的功能强大的功能,以使匹配精度对于由摄像机捕获导致的失真保持不变,同时将其传输所需的比特率降至最低。本文基于图像内容的熵,提取特征的熵和离散余弦变换(DCT)系数,提出了一种新颖的特征选择方法。在描述符域和DCT域中提出的方法,在低比特率传输下比在MPEG-7紧凑型描述符用于视觉搜索(CDVS)中使用的基于峰的最新特征选择具有更好的匹配精度。这已从图像检索实验中得到验证,并获得了具有复杂现实世界捕获失真的真实数据集的结果。结果表明,所提出的方法可以提高各种检测器的匹配精度,并且表明特征选择不仅可以实现低比特率传输,而且与应用于失真图像时使用所有特征相比,具有更高的匹配精度。因此,即使可以在高传输带宽的情况下传输所有特征,也应将特征选择应用于失真的查询图像,以确保较高的匹配精度。

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