水平最大池化是一种新的最大池化降噪方法,用于更好的特征检测

Yash More, Kunal Dumbre, Bahubali K. Shiragapur
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引用次数: 0

摘要

到目前为止,CNN(卷积神经网络)中的DNN(深度神经网络)已经成为更好更快的特征检测的主要焦点。为了提高模型的效率和准确性,越来越多的深度神经网络被提出。虽然所有的模型都是基于相同的构建支柱,如卷积子采样,池化,激活函数等在模型中使用。到目前为止,许多研究人员对使用不同的激活函数,如relu, leaky relu和目前使用的softmax激活函数表现出兴趣,但他们都使用类似的池化方法“Max pooling”。使用这种方法,我们可以更明显地检测特征,但也突出了一些不需要的特征,也称为噪声。因此,在本文中,我们引入了一种新的池化方法“水平最大池化”来降低这种噪声,从而更好地进行特征检测和提取。虽然本文只包含一个图像示例,但我们已经在许多不同的图像和矩阵上测试了这种方法,每个图像和矩阵都能降低噪声,并产生明显的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Horizontal Max Pooling a Novel Approach for Noise Reduction in Max Pooling for Better Feature Detect
As of now CNN(Convolutional Neural Network) in DNN(Deep Neural Network) has become a main focus for better and faster feature detections. More and more deep neural networks have been proposed to improve the efficiency and accuracy of models. While all the models are based on the same building pillars like convolution subsampling, pooling, activations functions etc. used in the model. Till now many researchers have shown interest in using different activation functions like relu, leaky relu and as of now using softmax activation function but yet they all are using similar pooling approach “Max Pooling”. Using this we can detect the feature more prominently but also highlighting some unwanted features too referred to as noise. So in this paper we have introduced a new pooling approach “Horizontal Max Pooling” to reduce this noise for better feature detection and extraction. Although this paper contains a single image example we have tested this approach on many different images and matrices each result in noise reduction and visible and noticeable change.
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