Texture Classification in Bioindicator Images Processing

@inproceedings{Mudrov2012TextureCI,
  title={Texture Classification in Bioindicator Images Processing},
  author={Martina Mudrov{\'a} and Petra Slav{\'i}kov{\'a} and Ale{\vs} Proch{\'a}zka},
  booktitle={Recent Advances in Intelligent Engineering Systems},
  year={2012}
}
The section deals with classification of microscope images of Picea Abies stomas. There is an assumption that a stoma character strongly depends on the level of air pollution, so that stoma can stand for an important environmental bioindicator. According to the level of stoma incrustation it is possible to distinguish several classes of stoma structures. A proposal of an algorithm enabling the automatic recognition of a stoma incrustation level is a main goal of this study. There are two… 

References

SHOWING 1-10 OF 48 REFERENCES
Automatic bioindicator images evaluation
TLDR
This work is devoted to a solution of the problem of stoma evaluation by means of texture classification and two principles discussed in the paper are based on gradient methods while the second one uses a wavelet transform.
Wavelet transform in image recognition
Texture segmentation and classification form a very important topic of the interdisciplinarg area of signal processing with many applications in diflerent areas including satellite image processing,
Texture classification and segmentation using wavelet frames
  • M. Unser
  • Mathematics
    IEEE Trans. Image Process.
  • 1995
This paper describes a new approach to the characterization of texture properties at multiple scales using the wavelet transform. The analysis uses an overcomplete wavelet decomposition, which yields
Image Classification Using Wavelet Coefficients in Low-pass Bands
  • Weibao Zou, Yan Li
  • Computer Science
    2007 International Joint Conference on Neural Networks
  • 2007
TLDR
A method based on wavelet coefficients in low-pass bands only for the image classification with adaptive processing of data structures to organize a large image database is proposed.
Texture segmentation using wavelet transform
Texture classification using wavelet transform
Filtering for Texture Classification: A Comparative Study
TLDR
Most major filtering approaches to texture feature extraction are reviewed and a ranking of the tested approaches based on extensive experiments is presented, showing the effect of the filtering is highlighted, keeping the local energy function and the classification algorithm identical for most approaches.
Handbook of Texture Analysis
TLDR
This collection of chapters brings together in one handy volume the major topics of importance, and categorizes the various techniques into comprehensible concepts of texture analysis.
Wavelet Transform Application in Biomedical Image Recovery and Enhancement
TLDR
The main part of the paper presents methods of the recovery of degraded parts and resolution enhancement of digital images, and proposed wavelet transform method for image resolution enhancement forms an alternative to the linear and the Fourier transform interpolation.
Randomized Clustering Forests for Image Classification
TLDR
This work introduces Extremely Randomized Clustering Forests-ensembles of randomly created clustering trees-and shows that they provide more accurate results, much faster training and testing, and good resistance to background clutter.
...
...