| Literature DB >> 24151424 |
Natchimuthu Santhi1, Chinnaraj Pradeepa, Parthasarathy Subashini, Senthil Kalaiselvi.
Abstract
A good understanding of the population dynamics of algal communities is crucial in several ecological and pollution studies of freshwater and oceanic systems. This paper reviews the subsequent introduction to the automatic identification of the algal communities using image processing techniques from microscope images. The diverse techniques of image preprocessing, segmentation, feature extraction and recognition are considered one by one and their parameters are summarized. Automatic identification and classification of algal community are very difficult due to various factors such as change in size and shape with climatic changes, various growth periods, and the presence of other microbes. Therefore, the significance, uniqueness, and various approaches are discussed and the analyses in image processing methods are evaluated. Algal identification and associated problems in water organisms have been projected as challenges in image processing application. Various image processing approaches based on textures, shapes, and an object boundary, as well as some segmentation methods like, edge detection and color segmentations, are highlighted. Finally, artificial neural networks and some machine learning algorithms were used to classify and identifying the algae. Further, some of the benefits and drawbacks of schemes are examined.Entities:
Keywords: Algae identification; feature extraction; identification; neural network; segmentation
Year: 2013 PMID: 24151424 PMCID: PMC3798295 DOI: 10.4137/BBI.S12844
Source DB: PubMed Journal: Bioinform Biol Insights ISSN: 1177-9322
Figure 1Proposed methodology of automatic algal identification.
Figure 2Pre processed images by various filters.
Note: The original images were collected from Algal Resource Database, Microbial cluture collection, National Institute for Environmental Studies. http://www.shigen.nig.ac.jp/algae/.
Comparison of noise removal filters using MSE and PSNR metrics.
| Image | Median filter | Wiener filter | Non uniform illumination using top-hat filter | |||
|---|---|---|---|---|---|---|
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|
|
| ||||
| MSE | PSNR | MSE | PSNR | MSE | PSNR | |
| Diatom | 0.0122 | 30.6193 | 0.0115 | 31.0761 | ||
| Closterium acerosum | 0.0152 | 30.8247 | 0.0120 | 35.4253 | 0.3542 | 23.1095 |
| Oscillatoria | 0.0076 | 33.4772 | 0.0078 | 43.4040 | 0.3090 | 23.9395 |
| Pediastrum | 0.0135 | 30.9478 | 0.0184 | 32.3668 | 0.4764 | 22.3336 |
| Pinnularia | 0.0058 | 35.6971 | 0.0069 | 36.3533 | 0.4965 | 24.4697 |
Figure 3Edge detection methods.
Comparison of the noise edge detection methods using MSE and PSNR metrics.
| Image | Sobel | Canny | ||
|---|---|---|---|---|
|
|
| |||
| MSE | PSNR | MSE | PSNR | |
| Diatom | 0.4546 | 25.7925 | 0.4236 | 27.8187 |
| Closterium acerosum | 0.3674 | 24.4938 | 0.3630 | 27.0445 |
| Gloeotrichia | 0.3016 | 26.2720 | 0.3097 | 27.6404 |
| Pediastrum | 0.5193 | 24.7969 | 0.4967 | 27.1131 |
| Pinnularia | 0.5087 | 25.9998 | 0.4941 | 27.4304 |
Moment invariants for the algae.
| Image | Moment invariant |
|---|---|
| Anabaena | 0.0211, 0.0004, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Closte | 0.0189, 0.0004, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Diatom | 0.0191, 0.0004, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Eremo | 0.0183, 0.0003, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Fibro | 0.0184, 0.0003, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Gloeo | 0.0183, 0.0003, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Microcystis | 0.0225, 0.0005, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Oscillatoria | 0.0235, 0.0006, 0.0000, 0.0000, 0.0000, 0.0000,0 |
| Penium | 0.0189, 0.0004, 0.0000, 0.0000, 0.0000, 0.0000,0 |
Observation and analysis on existing system.
| Author | Year | Objectives | Methods | Results | ||
|---|---|---|---|---|---|---|
|
| ||||||
| Segmentation | Feature extraction | Classification | ||||
| Stefan et al | 1995 | Automated recognition of blue green algae | Sobel edge detection | Fourier descriptors and moment invariants | Discriminant analysis | 98% |
| Gao et al | 2011 | Automatic identification of diatoms with circular shape using texture analysis | Canny edge detection | Fourier spectrum Neural | Networks | 94.44% |
| Mansoor et al | 2011 | Automatic recognition system for some cyanobacteria using image processing techniques and ANN approach | Thresholding technique | Principal component analysis | Multilayer perceptron feed forward artificial neural networks | 95% |
| Walker et al | 2011 | Fluroscence-assissted image analysis of freshwater microalgae | Binary segmentation | Co occurrence matrix measures | Bayes decision function | – |
| Fang et al | 2011 | Automatic identification of mycobacterium tuberculosis in acid-fast stain sputum smears with image processing neural networks | – | – | Perceptron and FFNN | 100% |
| Anggraini et al | 2011 | Automated status identification of microscopic images obtained from malaria thin blood smears using bayes decesion | Edge detection, thresholding, segmentation and watershed algorithm | – | Bayes classifier | 99.65% |