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good afternoon everyone iamp;#39;m marti salvaraj pursuing pihashi in university under the guidance of dr k gita ma today i am going to present our work an automated cervical cancer direction mechanism using pap smear images in which dr n are the co-authors of this proposed work cervical cancer is one of the predominant type of cancer in women over 30 years in india statistical results revealed that of all cancers in women 6 to 29 percent constitute cervical cancer this work focuses on the pap smear single cell image classification using deep learning model especially cnn this is the simple outline of my presentation first i start with aim and objectives of this proposed work next i explain the limitation of the existing framework for pap smear single cell image classification then i focus on the proposed methodology with the analysis on herlav data set finally i concentrate on the results of the proposed methodology with performance metrics and comparison of the existing fram