Washroom Sign Detection Using Convolutional Neural Network in Natural Scene Images

Dipanita Chakraborty, W. Chiracharit
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引用次数: 1

Abstract

Due to disabilities, visually impaired or blind people face difficulties to recognize washroom sign in public places by themselves. In natural scene images, so many objects are present that are similar to human shaped male or female washroom sign making it more difficult to detect and classify between male and female washroom sign. Moreover, at a certain distance, a human body is also look like washroom sign, where system might get confused to classify between a real human figure and a human shaped washroom sign. Focusing on this issue, deep learning- based methods are proposed to detect common patterns of washroom signs in natural images. In this proposed method, MSER algorithm is used for object detection, Geometrical properties algorithm is used for text part and unwanted part removal and then region of interest has been detected by bounding box algorithm, at last CNN is used to classify washroom sign images into three different classes, i.e. ‘washroom sign’, ‘female washroom sign’ and ‘men washroom sign’. Our CNN classifier gives an accuracy with 96%- 99%. The experimental results were compared with other methods such as SVM, HOG, AdaBoost, MCT to compare the accuracy results with our proposed method which is described in Proposed Method.
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基于卷积神经网络的自然场景图像盥洗室标志检测
由于残疾,视障人士或盲人在公共场所识别厕所标志时遇到困难。在自然场景图像中,存在着许多与人形男女卫生间标志相似的物体,使得男女卫生间标志的检测和分类更加困难。此外,在一定距离内,人体也看起来像洗手间标志,系统可能会混淆区分真人和人形洗手间标志。针对这一问题,提出了基于深度学习的方法来检测自然图像中洗手间标志的常见模式。该方法利用MSER算法进行目标检测,利用几何属性算法去除文本部分和不需要的部分,然后利用边界盒算法检测感兴趣区域,最后利用CNN将卫生间标志图像分为“卫生间标志”、“女卫生间标志”和“男卫生间标志”三类。我们的CNN分类器给出了96%- 99%的准确率。将实验结果与SVM、HOG、AdaBoost、MCT等方法进行比较,与本文提出的方法进行精度比较。
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