The plasmodium group single-celled parasite that causes malaria is contagious. A female Anopheles mosquito with the infection is most frequently the one spreading it. Over 40 of the world’s population is at danger; 219 million illnesses and around 435,000 deaths were recorded in 2017 alone. Even with many sophisticated evaluation tools, microscopists in resource constrained settings still struggle to improve the accuracy of diagnosis. Cell picture classification using deep learning avoids making incorrect diagnosis conclusions. This research aims to increase diagnostic accuracy by classifying malarial-infected cells using majority voting ensembling in conjunction with triplet loss aided label contrastive learning. The outcomes of the experiment demonstrate how well our method works with microscopic cell images in terms of accuracy, precision, recall, and other parameters.

错误:搜索内容不能为空,请输入英文关键词
错误:关键词超出字数限制,请精简
高级检索

Majority-LCL: Malaria Cell Detection Via Label Contrastive Learning and Majority Voting Ensembling

  • Shreyan Kundu,
  • Rahul Talukdar,
  • Nirban Roy,
  • Semanti Das,
  • Soumili Basu,
  • Souradeep Mukhopadhyay,
  • Biswadip Basu Mallik

摘要

The plasmodium group single-celled parasite that causes malaria is contagious. A female Anopheles mosquito with the infection is most frequently the one spreading it. Over 40 of the world’s population is at danger; 219 million illnesses and around 435,000 deaths were recorded in 2017 alone. Even with many sophisticated evaluation tools, microscopists in resource constrained settings still struggle to improve the accuracy of diagnosis. Cell picture classification using deep learning avoids making incorrect diagnosis conclusions. This research aims to increase diagnostic accuracy by classifying malarial-infected cells using majority voting ensembling in conjunction with triplet loss aided label contrastive learning. The outcomes of the experiment demonstrate how well our method works with microscopic cell images in terms of accuracy, precision, recall, and other parameters.