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A comparison among keyframe extraction techniques for CNN classification based on video periocular images

机译:基于视频围曲图像的CNN分类关键帧提取技术的比较

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摘要

Training and validation sets of labeled data are important components used in supervised learning to build a classification model. During training, most learning algorithms use all images from the given training set to estimate the model's parameters. Particularly for video classification, it is required a keyframe extraction technique in order to select representative frames for training, which commonly is based on simple heuristics such as low level features frame difference. As some learning algorithms are noise sensitive, it is important to carefully select frames for training so that the model's optimization is accomplished more accurately and faster. We propose in this paper to analyze four methodologies for selecting representative frames of a periocular video database. One of them is based on the thresholds calculation (T), the other is a modified Kennard-Stone (KS) model, the thir method is based on sum of absolute difference in LUV colorspace and the last one is random sampling. To evaluate the selected image sets we use two deep network methodologies: feature extraction (FE) and fine tuning (FT). The results show that with a reduced amount of training images we can achieve the same accuracy of the complete database using the modified KS refinement methodology and the FT evaluation method.
机译:标记数据的培训和验证集是用于建立分类模型的监督学习的重要组成部分。在培训期间,大多数学习算法使用给定培训集中的所有图像都以估计模型的参数。特别是对于视频分类,需要一个关键帧提取技术,以便选择用于训练的代表帧,这通常基于诸如低电平特征帧差异的简单启发式。由于一些学习算法是噪声敏感的,重要的是要仔细选择用于训练的帧,以便更准确地完成模型的优化。我们提出本文分析四种方法,用于选择围流视频数据库的代表帧。其中一个是基于阈值计算(t),另一个是修改的kennard-stone(ks)模型,Thir方法基于Luv颜色空间的绝对差异之和,最后一个是随机采样。为了评估所选择的图像集,我们使用两个深网络方法:特征提取(FE)和微调(FT)。结果表明,通过减少量的训练图像,我们可以使用修改的KS细化方法和FT评估方法来实现完整数据库的相同精度。

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