Affiliation:
1. School of Computer & Information Engineering, Central South University of Forest & Technology, Changsha 410000, China
Abstract
The automatic recognition of CT (Computed Tomography) images of liver cancer is important for the diagnosis and treatment of early liver cancer. However, there are problems such as single model structure and loss of pooling layer information when using a traditional convolutional neural network to recognize CT images of liver cancer. Therefore, this paper proposes an efficient method for liver CT image recognition based on the capsule network (CapsNet). Firstly, the liver CT images are preprocessed, and in the process of image denoising, the traditional non-local mean (NLM) denoising algorithm is optimized with a superpixel segmentation algorithm to better protect the information of image edges. After that, CapsNet was used for image recognition for liver CT images. The experimental results show that the average recognition rate of liver CT images reaches 92.9% when CapsNet is used, which is 5.3% higher than the traditional CNN model, indicating that CapsNet has better recognition accuracy for liver CT images.
Funder
Changsha Municipal & Natural Science Foundation
National Natural Science Foundation in China
National Natural Science Foundation of Hunan Province
Department of Education Hunan Province
Reference36 articles.
1. Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries;Bray;CA A Cancer J. Clin.,2018
2. A survey on digital image processing techniques for tumor detection;Verma;Indian J. Sci. Technol.,2016
3. Anisha, P.R., Reddy, C.K.K., and Prasad, L.V.N. (2015, January 2–3). A pragmatic approach for detecting liver cancer using image processing and data mining techniques; Signal processing and communication engineering systems (SPACES). Proceedings of the 2015 International Conference on Signal Processing and Communication Engineering Systems, Guntur, India.
4. Deep Learning for Image-based Cancer Detection and Diagnosis—A Survey;Hu;Pattern Recognit.,2018
5. Lee, C., Chen, S.H., Tsai, H.M., Chung, P.C., and Chiang, Y.C. (2006, January 22–23). Discrimination of liver diseases from CT images based on Gabor filters. Proceedings of the 19th IEEE Symposium on Computer-Based Medical Systems (CBMS′06), Salt Lake City, UT, USA.
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