Colorectal cancer is a leading cause of cancer deaths, estimated 696 thousand worldwide. Recent years have seen an increase of deep learning techniques and algorithms being used to detect colon polyps. In this work we address colon polyp detection using Convolutional Neural Networks (CNNs) combined with Autoencoders. We use 3 publicly available databases namely: CVC-ColonDB, CVC-ClinicDB and ETIS-LaribPolypDB, to train the model. The results obtained in terms of accuracy are: 0.937, 0.951, 0.967 for the above-mentioned databases respectively. Due to the nature of the colon polyps, diverse shapes and characteristics, there is still place for improvements.
Ornela BardhiDaniel Sierra-SosaBegonya García-ZapirainAdel Elmaghraby
Bardhi, OrnelaSierra-Sosa, DanielBegonya Garcia-ZapirainElmaghraby, Adel
Chin Yii EuTong Boon TangCheng-Hung LinLok Hua LeeCheng‐Kai Lu