Matches in SemOpenAlex for { <https://semopenalex.org/work/W4288391511> ?p ?o ?g. }
- W4288391511 endingPage "79515" @default.
- W4288391511 startingPage "79502" @default.
- W4288391511 abstract "Wounds not only harm the physical and mental health of patients, but also introduce huge medical costs. Meanwhile, there is a shortage of physicians in some areas, and clinical examinations are sometimes unreliable in wound diagnosis. Reliable wound analysis is of great importance in its diagnosis, treatment, and care. Currently, deep learning has developed rapidly in the field of computer vision and medical imaging and has become the most commonly used technique in wound image analysis. This paper studies the current research on deep learning in the field of wound image analysis, including classification, detection, and segmentation. We first review the publicly available datasets from various research, and study the preprocessing methods used in wound image analysis. Second, various models used in different deep learning tasks (classification, detection, and segmentation) and their applications in different types of wounds (e.g., burns, diabetic foot ulcers, pressure ulcers) are investigated. Finally, we discuss the challenges in the field of wound image analysis using deep learning, and provide an outlook on the research and development prospects." @default.
- W4288391511 created "2022-07-29" @default.
- W4288391511 creator A5001008928 @default.
- W4288391511 creator A5021827481 @default.
- W4288391511 creator A5035153981 @default.
- W4288391511 creator A5046202020 @default.
- W4288391511 creator A5061581158 @default.
- W4288391511 date "2022-01-01" @default.
- W4288391511 modified "2023-10-16" @default.
- W4288391511 title "A Survey of Wound Image Analysis Using Deep Learning: Classification, Detection, and Segmentation" @default.
- W4288391511 cites W1536680647 @default.
- W4288391511 cites W1903029394 @default.
- W4288391511 cites W1975377034 @default.
- W4288391511 cites W1975764183 @default.
- W4288391511 cites W1976166730 @default.
- W4288391511 cites W1989544085 @default.
- W4288391511 cites W2022382397 @default.
- W4288391511 cites W2042667699 @default.
- W4288391511 cites W2061428499 @default.
- W4288391511 cites W2078877550 @default.
- W4288391511 cites W2094873648 @default.
- W4288391511 cites W2102605133 @default.
- W4288391511 cites W2105511530 @default.
- W4288391511 cites W2147800946 @default.
- W4288391511 cites W2150716843 @default.
- W4288391511 cites W2160627913 @default.
- W4288391511 cites W2194775991 @default.
- W4288391511 cites W2330219538 @default.
- W4288391511 cites W2412782625 @default.
- W4288391511 cites W2415836609 @default.
- W4288391511 cites W2497928028 @default.
- W4288391511 cites W2533800772 @default.
- W4288391511 cites W2592929672 @default.
- W4288391511 cites W2607941059 @default.
- W4288391511 cites W2618530766 @default.
- W4288391511 cites W2788633781 @default.
- W4288391511 cites W2800816754 @default.
- W4288391511 cites W2807769526 @default.
- W4288391511 cites W2890331880 @default.
- W4288391511 cites W2893456591 @default.
- W4288391511 cites W2898800333 @default.
- W4288391511 cites W2919115771 @default.
- W4288391511 cites W2925489996 @default.
- W4288391511 cites W2947263797 @default.
- W4288391511 cites W2949088970 @default.
- W4288391511 cites W2954074628 @default.
- W4288391511 cites W2955892542 @default.
- W4288391511 cites W2958150439 @default.
- W4288391511 cites W2962799915 @default.
- W4288391511 cites W2963037989 @default.
- W4288391511 cites W2963125010 @default.
- W4288391511 cites W2963150697 @default.
- W4288391511 cites W2963446712 @default.
- W4288391511 cites W2964274014 @default.
- W4288391511 cites W2967307920 @default.
- W4288391511 cites W2972612047 @default.
- W4288391511 cites W2972813610 @default.
- W4288391511 cites W2978628650 @default.
- W4288391511 cites W2979913327 @default.
- W4288391511 cites W2979932740 @default.
- W4288391511 cites W2979957913 @default.
- W4288391511 cites W2983126243 @default.
- W4288391511 cites W2995790441 @default.
- W4288391511 cites W3000115636 @default.
- W4288391511 cites W3005009412 @default.
- W4288391511 cites W3012221628 @default.
- W4288391511 cites W3017757507 @default.
- W4288391511 cites W3023447964 @default.
- W4288391511 cites W3028265349 @default.
- W4288391511 cites W3041135679 @default.
- W4288391511 cites W3045249771 @default.
- W4288391511 cites W3048232331 @default.
- W4288391511 cites W3082817341 @default.
- W4288391511 cites W3083622693 @default.
- W4288391511 cites W3085181011 @default.
- W4288391511 cites W3092760571 @default.
- W4288391511 cites W3095986980 @default.
- W4288391511 cites W3096609285 @default.
- W4288391511 cites W3107383999 @default.
- W4288391511 cites W3111142877 @default.
- W4288391511 cites W3113958007 @default.
- W4288391511 cites W3114385744 @default.
- W4288391511 cites W3119303168 @default.
- W4288391511 cites W3120048594 @default.
- W4288391511 cites W3128549083 @default.
- W4288391511 cites W3130667597 @default.
- W4288391511 cites W3130709977 @default.
- W4288391511 cites W3144790505 @default.
- W4288391511 cites W3158324689 @default.
- W4288391511 cites W3164484895 @default.
- W4288391511 cites W3174248541 @default.
- W4288391511 cites W3179838356 @default.
- W4288391511 cites W3200021711 @default.
- W4288391511 cites W3201062783 @default.
- W4288391511 cites W3213847993 @default.
- W4288391511 cites W4213219238 @default.
- W4288391511 doi "https://doi.org/10.1109/access.2022.3194529" @default.
- W4288391511 hasPublicationYear "2022" @default.