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Detection of Dust Deposition Using Convolutional Neural Network for Heritage Images

机译:使用卷积神经网络进行遗产图像灰尘沉积的检测

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This paper presents a vision-based approach for heritage image classification and condition monitoring to preserve the historical facts. The proposed approach uses convolutional neural network for classification. The approach interprets the heritage condition in terms of dust level. Initially, real-time scene image is preprocessed using image processing operators such as dilation, erosion, region filling, and binarization. Resultant image is segmented and enclosed by bounding boxes. The enclosed segments are fed to CNN for classification. The proposed approach also provides the dust level in image by comparison of probability score of the classified image with ideal one. The dust is interpreted as Gaussian noise in the image. The dust level, greater than an acceptable tolerance level, generates a notification for heritage maintenance. Results show that the proposed approach is able to classify the heritage image in the presence of noise.
机译:本文提出了一种基于视觉的遗产图像分类和条件监测方法,以保护历史事实。 该方法采用卷积神经网络进行分类。 该方法在灰尘水平方面解释了遗产条件。 最初,使用诸如扩张,侵蚀,区域填充和二值化的图像处理操作员预处理实时场景图像。 由边界框分割并括起来的图像。 封闭的段被馈送到CNN以进行分类。 所提出的方法还通过与理想的图像的概率得分比较来提供图像中的灰尘水平。 灰尘被解释为图像中的高斯噪声。 灰尘水平大于可接受的公差水平,为遗产维护产生通知。 结果表明,该方法能够在存在噪声的情况下将遗产图像分类。

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