抽象的な

The theory of random sets as flexible texture descriptor for biological and medical objects and self-similarity as feature descriptors for the description of the appearances of cells and motion

 Petra Perner

Statistical methods play an important role in the description of image objects. The texture is one of the most important methods to describe the appearance of the objects such as cells, tissues and so on. While the standard statistical texture descriptor is based on the co-occurrence matrix we propose a very flexible texture descriptor based on Random Sets. The texture descriptor can describe small objects as well as large objects in fine granularity. It also has an explanation capability that allows humans to understand the nature of the texture. Self-similarity is another important method to describe the appearance of the cells as well as the motion or kinetics of the cells. This descriptor summarizes a bunch of features in one feature and gives a semantic description of what is going on. Both novel statistical descriptors are flexible enough in order to describe the different things going on with an object and they are also very fast to calculate. They can form a standard tool for different descriptions of medical and biological objects and other objects under consideration.

免責事項: この要約は人工知能ツールを使用して翻訳されており、まだレビューまたは確認されていません

インデックス付き

Chemical Abstracts Service (CAS)
Google Scholar
Open J Gate
Academic Keys
ResearchBible
The Global Impact Factor (GIF)
CiteFactor
Cosmos IF
Electronic Journals Library
RefSeek
Hamdard University
World Catalogue of Scientific Journals
IndianScience.in
Scholarsteer
Publons
International Innovative Journal Impact Factor (IIJIF)
International Institute of Organised Research (I2OR)
Cosmos

もっと見る