首页> 外文会议>5th Kuala Lumpur international conference on biomedical engineering 2011 >Hybrid MuJtiJayered Perceptron Network Trained by Modified Recursive Prediction Error-Extreme Learning Machine for Tuberculosis Bacilli Detection
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Hybrid MuJtiJayered Perceptron Network Trained by Modified Recursive Prediction Error-Extreme Learning Machine for Tuberculosis Bacilli Detection

机译:改进的递归预测误差极大学习机训练的混合多重感知器网络,用于结核杆菌的检测

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In this paper, image processing technique and artificial neural network are used to detect and classify the tuberculosis (TB) bacilli in tissue slide images. The tissue sections consisting of TB bacilli are stained using the Ziehl-Neelsen method and their images are acquired using a digital camera mounted on a light microscope. Colour image segmentation is applied to remove the remove undesired artefacts and background. Then affine moment invariants are extracted to represent the segmented regions. Finally, the study proposes a method that integrates both Modified Recursive Prediction Error (MRPE) algorithm and Extreme Learning Machine, called MRPE-ELM to train Hybrid Multilayered Perceptron (HMLP) network. The network is used to classify the segmented regions into three classes: 'TB', 'overlapped TB' and 'non-TB'. The classification performance of the HMLP network trained by the MRPE-ELM is compared with the HMLP trained by the MRPE algorithm and single layer feedforward neural network (SLFNN) trained by the ELM. The results indicated that the proposed MRPE-ELM has slightly improves the classification performance and reduces the number of epochs required in the training process compared to the MRPE algorithm.
机译:本文采用图像处理技术和人工神经网络对组织切片图像中的结核杆菌进行检测和分类。使用Ziehl-Neelsen方法对由结核杆菌组成的组织切片进行染色,并使用安装在光学显微镜上的数码相机获取其图像。应用彩色图像分割以去除去除的不需要的伪像和背景。然后提取仿射矩不变式来表示分割区域。最后,研究提出了一种将改进的递归预测误差(MRPE)算法和极限学习机(称为MRPE-ELM)集成在一起的方法来训练混合多层感知器(HMLP)网络。该网络用于将分段区域分为三类:“ TB”,“重叠TB”和“非TB”。将MRPE-ELM训练的HMLP网络的分类性能与MRPE算法训练的HMLP和ELM训练的单层前馈神经网络(SLFNN)进行了比较。结果表明,与MRPE算法相比,提出的MRPE-ELM略微提高了分类性能,并减少了训练过程中所需的时期数。

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