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Information Based Universal Feature Extraction in Shallow Networks

机译:浅层网络中基于信息的通用特征提取

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摘要

In many real-world image based pattern recognition tasks, the extraction and usage of task-relevant features are the most crucial part of the diagnosis. In the standard approach, either the features are given by common sense like edges or corners in image analysis, or they are directly determined by expertise. They mostly remain task-specific, although human may learn the life time, and use different features too, although same features do help in recognition. It seems that a universal feature set exists, but it is not yet systematically found. In our contribution, we try to find such a universal image feature set that is valuable for most image related tasks. We trained a shallow neural network for recognition of natural and non-natural object images before different backgrounds, including pure texture and handwritten digits, using a Shannon information-based algorithm and learning constraints. In this context, the goal was to extract those features that give the most valuable information for classification of the visual objects, hand-written digits and texture datasets by a one layer network and then classify them by a second layer. This will give a good start and performance for all other image learning tasks, implementing a transfer learning approach. As result, in our case we found that we could indeed extract unique features which are valid in all three different kinds of tasks. They give classification results that are about as good as the results reported by the corresponding literature for the specialized systems, or even better ones.
机译:在许多基于现实世界图像的模式识别任务中,与任务相关的特征的提取和使用是诊断中最关键的部分。在标准方法中,功能是通过图像分析中的边缘或角等常识来给出的,或者是由专业知识直接确定的。尽管人类可能会学习生活时间,并且他们也使用不同的功能,但是大多数功能仍然是特定于任务的,尽管相同的功能确实有助于识别。似乎存在通用功能集,但尚未系统地找到它。在我们的贡献中,我们尝试找到一种通用的图像功能集,该功能集对于大多数与图像相关的任务都很有价值。我们使用了基于Shannon信息的算法和学习限制条件,训练了一个浅层神经网络来识别自然背景和非自然物体的图像,然后才能识别出不同背景(包括纯纹理和手写数字)。在这种情况下,目标是提取那些为通过一层网络对视觉对象,手写数字和纹理数据集进行分类提供最有价值信息的特征,然后通过第二层对其进行分类。这将为所有其他图像学习任务提供良好的开端和性能,并实施转移学习方法。结果,在我们的案例中,我们发现确实可以提取出在所有三种不同任务中均有效的独特功能。他们给出的分类结果大约与相应文献针对专用系统报告的结果一样好,甚至更好。

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