Matches in SemOpenAlex for { <https://semopenalex.org/work/W3044704315> ?p ?o ?g. }
- W3044704315 endingPage "132859" @default.
- W3044704315 startingPage "132850" @default.
- W3044704315 abstract "The continuous improvements in the area of medical imaging, makes the patient monitoring a crucial concern. The internet of things (IoT) embedded in a medical technologies to collect data from human body through sensors, wireless connectivity etc. The junction of medicine and IT like medical informatics will transform healthcare, curbing cost, make more efficient, and saving lives. Various computerized techniques are implemented in the area of Artificial Intelligence (AI) for the application of medical imaging to diagnose the infected regions in the images and videos such as WCE and pathology. The famous stomach infections are ulcer, polyp, and bleeding. Stomach cancer is the most common infection and a leading cause of human deaths worldwide. In the USA, since 2019, a total of 27,510 new cases are reported including 17,230 men and 10,230 women. While the number of deaths is 11,140 consists of 6,800 men and 4,340 women. The manual diagnosis of these stomach infections is a difficult and agitated process therefore it is required to design a fully automated system using AI. In this article, we presented a fully automated system for stomach infection recognition based on deep learning features fusion and selection. In this design, ulcer images are assigned manually and support to a saliency-based method for ulcer detection. Later, pre-trained deep learning model named VGG16 is employing and re-trained using transfer learning. Features of re-trained model are extracted from two consecutive fully connected layers and fused by array-based approach. Besides, the best individuals are selected through the metaheuristic approach name PSO along mean value-based fitness function. The selected individuals are finally recognized through Cubic SVM. The experiments are conducted on Private collected dataset and achieved an accuracy of 98.4%, which is best as compared to existing state-of-the-art techniques." @default.
- W3044704315 created "2020-07-29" @default.
- W3044704315 creator A5007903045 @default.
- W3044704315 creator A5012372409 @default.
- W3044704315 creator A5026129199 @default.
- W3044704315 creator A5037566676 @default.
- W3044704315 creator A5056024500 @default.
- W3044704315 creator A5067940140 @default.
- W3044704315 creator A5090965728 @default.
- W3044704315 date "2020-01-01" @default.
- W3044704315 modified "2023-10-11" @default.
- W3044704315 title "Computer-Aided Gastrointestinal Diseases Analysis From Wireless Capsule Endoscopy: A Framework of Best Features Selection" @default.
- W3044704315 cites W1538725615 @default.
- W3044704315 cites W1996498812 @default.
- W3044704315 cites W2090029815 @default.
- W3044704315 cites W2114867966 @default.
- W3044704315 cites W2128254161 @default.
- W3044704315 cites W2135448315 @default.
- W3044704315 cites W2165149714 @default.
- W3044704315 cites W2194775991 @default.
- W3044704315 cites W2547018007 @default.
- W3044704315 cites W2571807506 @default.
- W3044704315 cites W2584038571 @default.
- W3044704315 cites W2586726574 @default.
- W3044704315 cites W2594373254 @default.
- W3044704315 cites W2594656827 @default.
- W3044704315 cites W2610691757 @default.
- W3044704315 cites W2623808523 @default.
- W3044704315 cites W2735728519 @default.
- W3044704315 cites W2745816562 @default.
- W3044704315 cites W2746647587 @default.
- W3044704315 cites W2757457388 @default.
- W3044704315 cites W2765146014 @default.
- W3044704315 cites W2765751622 @default.
- W3044704315 cites W2767115216 @default.
- W3044704315 cites W2767281311 @default.
- W3044704315 cites W2767651786 @default.
- W3044704315 cites W2781545389 @default.
- W3044704315 cites W2791422233 @default.
- W3044704315 cites W2801303530 @default.
- W3044704315 cites W2809100241 @default.
- W3044704315 cites W2830936856 @default.
- W3044704315 cites W2883401790 @default.
- W3044704315 cites W2903824448 @default.
- W3044704315 cites W2908286818 @default.
- W3044704315 cites W2909294258 @default.
- W3044704315 cites W2911440706 @default.
- W3044704315 cites W2914082027 @default.
- W3044704315 cites W2916213758 @default.
- W3044704315 cites W2922211281 @default.
- W3044704315 cites W2939794185 @default.
- W3044704315 cites W2954262208 @default.
- W3044704315 cites W2956057111 @default.
- W3044704315 cites W2963853763 @default.
- W3044704315 cites W2983509244 @default.
- W3044704315 cites W2983542513 @default.
- W3044704315 cites W2988970523 @default.
- W3044704315 cites W2989417270 @default.
- W3044704315 cites W2990040069 @default.
- W3044704315 cites W2992424090 @default.
- W3044704315 cites W4239147634 @default.
- W3044704315 doi "https://doi.org/10.1109/access.2020.3010448" @default.
- W3044704315 hasPublicationYear "2020" @default.
- W3044704315 type Work @default.
- W3044704315 sameAs 3044704315 @default.
- W3044704315 citedByCount "88" @default.
- W3044704315 countsByYear W30447043152020 @default.
- W3044704315 countsByYear W30447043152021 @default.
- W3044704315 countsByYear W30447043152022 @default.
- W3044704315 countsByYear W30447043152023 @default.
- W3044704315 crossrefType "journal-article" @default.
- W3044704315 hasAuthorship W3044704315A5007903045 @default.
- W3044704315 hasAuthorship W3044704315A5012372409 @default.
- W3044704315 hasAuthorship W3044704315A5026129199 @default.
- W3044704315 hasAuthorship W3044704315A5037566676 @default.
- W3044704315 hasAuthorship W3044704315A5056024500 @default.
- W3044704315 hasAuthorship W3044704315A5067940140 @default.
- W3044704315 hasAuthorship W3044704315A5090965728 @default.
- W3044704315 hasBestOaLocation W30447043151 @default.
- W3044704315 hasConcept C108583219 @default.
- W3044704315 hasConcept C119599485 @default.
- W3044704315 hasConcept C119857082 @default.
- W3044704315 hasConcept C126838900 @default.
- W3044704315 hasConcept C127413603 @default.
- W3044704315 hasConcept C138816342 @default.
- W3044704315 hasConcept C142724271 @default.
- W3044704315 hasConcept C145642194 @default.
- W3044704315 hasConcept C154945302 @default.
- W3044704315 hasConcept C191630685 @default.
- W3044704315 hasConcept C2777333622 @default.
- W3044704315 hasConcept C31601959 @default.
- W3044704315 hasConcept C41008148 @default.
- W3044704315 hasConcept C71924100 @default.
- W3044704315 hasConcept C81917197 @default.
- W3044704315 hasConceptScore W3044704315C108583219 @default.
- W3044704315 hasConceptScore W3044704315C119599485 @default.
- W3044704315 hasConceptScore W3044704315C119857082 @default.
- W3044704315 hasConceptScore W3044704315C126838900 @default.