A Web Page Classifier Library Based on Random Image Content Analysis Using Deep Learning

L. E. Leal, Kaj-Mikael Björk, A. Lendasse, Anton Akusok
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引用次数: 9

Abstract

In this paper we present a methodology and the corresponding Python library1 for the classification of webpages. The method retrieves a fixed number of images from a given webpage, and based on them classifies the webpage into a set of established classes with a given probability. The library trains a random forest model built upon the features extracted from images by a pre-trained neural network. The implementation is tested by recognizing weapon class webpages in a curated list of 3859 websites. The results show that the best method of classifying a webpage among the classes of interest is to assign the class according to the maximum probability of any image belonging to this (weapon) class being above the threshold, across all the retrieved images. Our finding can have an important impact in the treatment of internet addictions.
基于深度学习随机图像内容分析的网页分类器库
在本文中,我们提出了一种方法和相应的Python库1用于网页分类。该方法从给定的网页中检索固定数量的图像,并在此基础上以给定的概率将网页分类为一组已建立的类。该库训练了一个随机森林模型,该模型建立在通过预训练的神经网络从图像中提取特征的基础上。通过在3859个网站的策划列表中识别武器类网页来测试该实现。结果表明,在感兴趣的类别中对网页进行分类的最佳方法是根据在所有检索到的图像中属于该(武器)类别的任何图像超过阈值的最大概率来分配类别。我们的发现可以对网瘾的治疗产生重要影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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