Background and Purpose: Convolutional neural network is widely used for image recognition in the medical area at nowadays. However, overall accuracy in predicting lung tumor is low and the processing time is high as the error occurred while reconstructing the CT image. The aim of this work is to increase the overall prediction accuracy along with reducing processing time by using multispace image in pooling layer of convolution neural network. Methodology: The proposed method has the autoencoder system to improve the overall accuracy, and to predict lung cancer by using multispace image in pooling layer of convolution neural network and Adam Algorithm for optimization. First, the CT images were pre-processed by feeding image to the convolution filter and down sampled by using max pooling. Then, features are extracted using the autoencoder model based on convolutional neural network and multispace image reconstruction technique is used to reduce error while reconstructing the image which then results improved accuracy to predict lung nodule. Finally, the reconstructed images are taken as input for SoftMax classifier to classify the CT images. Results: The state-of-art and proposed solutions were processed in Python Tensor Flow and It provides significant increase in accuracy in classification of lung cancer to 99.5 from 98.9 and decrease in processing time from 10 frames/second to 12 seconds/second. Conclusion: The proposed solution provides high classification accuracy along with less processing time compared to the state of art. For future research, large dataset can be implemented, and low pixel image can be processed to evaluate the classification
翻译:背景和目的:当今医学领域广泛使用进化神经网络来进行图像识别;然而,预测肺肿瘤的总体准确性较低,处理时间也较高,因为重建CT图像时发生错误,因此,预测肺部肿瘤的总体准确性较低,处理时间也较高。这项工作的目的是利用多空间图像来集合进化神经网络的集合层,提高总体预测准确性和缩短处理时间,同时减少处理时间。方法:拟议方法有自动编码系统,以提高总体准确性,并通过利用多空间图像来预测肺癌。最后,在汇集进化神经网络和Adam Algorithm的层时,利用多空间图像来进行多空间图像识别。首先,通过将图像装入进化过滤器过滤器的错误性处理,并随后通过最大集合进行取样。然后,利用基于进化神经网络和多空间图像重建技术的自动编码模型模型来减少处理时间,同时重建图像,从而提高肺脏结核预测的准确性。最后,重建后的图像可用作SoftMax分类对CT图像进行分类的输入。结果:将图像的状态-艺术和拟议的大型图像处理方法从98秒到10秒后进行大幅的精确处理。