Sitoloji preperatlarının görüntü işlenmesi için bir araç olarak dalgacık analizi metodolojisi

Amaç: Bu çalışmanın amacı sitoloji preperatlarının görüntülerinin işlenmesinde dalgacık analizlerinin kullanılma olasılığını belirlemektir. Gereç ve Yöntem: Sitoloji preparatlarının farklı bir görüntü seti, kontrastlarindaki değişimler ve dalgacık analizlerinin metolojik uygulamalarıyla analiz edildi.Bulgular: Sitoloji preparat görüntülerinin işlenmesi prosedürü geliştirildi. Sitolojik preparat görüntü işlenmesi prosedürü kalitatif olarak (görüntüleme açısından) birçok yapının tanımlanmasına izin verir: hücre yapısının analizi, hücre görüntülerinin yapısal özellikleri, hücre sınırları, ve hücre nukleuslari. Sonuç: Sitolojik preparatların görüntüleme işlenmesi için dalgacık analizlerinin uygulanabilirligi ve yapılabilirliginin düşünülmesi. Bu işlem sitolojik preparatların görüntüleme analizi kalitesini iyileştirir dolayısıyla bu da daha uygun şekilde tanıya olanak tanıyacaktır.

The methodology of wavelet analysis as a tool for cytology preparations image processing

AbstractPurpose: The aim of this study was to determine the possibility of using wavelet analysis for processing images of cytology preparations.Material and Methods: A set of different images of cytology preparations were analyzed through changes in their contrast and application of the methodology of the wavelet analysis.Results: Developed procedure of processing of cytology preparations images. Procedure of processing of cytology preparations images allows to qualitatively (in terms of their visualization) allocating: cells’ edges, cell nuclei, revealing in more detail textural features of cells’ images, which allows analyzing cell structure.Conclusion: Consider the possibility and feasibility issues of applying wavelet analysis for processing cytology preparations images. This improves the quality of the analysis of cytology preparations images. This allows the to properly diagnose.

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Cukurova Medical Journal-Cover
  • ISSN: 2602-3032
  • Yayın Aralığı: Yılda 4 Sayı
  • Başlangıç: 1976
  • Yayıncı: Çukurova Üniversitesi Tıp Fakültesi