Design and testing of an underwater microscope and image processing system for the study of zooplankton distribution

被引:14
作者
Akiba, T [1 ]
Kakui, Y [1 ]
机构
[1] Minist Int Trade & Ind, Life Elect Res Ctr, Electrotech Lab, Agcy Ind Sci & Technol, Hyogo 6610974, Japan
关键词
higher order autocorrleation; pattern recognition; statistical image processing; suspended matter density condense; underwater microscope; zooplankton;
D O I
10.1109/48.820741
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
A method that can monitor the density of zooplankton at an adequate spatio-temporal resolution is desired in oceanic ecosystem research. To address this need, we have developed a submersible microscope equipped with a noninterlace CCD camera. The target plankton for this microscope includes Copepoda, Ploima, and Ciliata, which are dominant species in the coastal waters around Japan. In addition, the requirements of systems for the underwater imaging of zooplankton are discussed. The key issues investigated for their possible influence on system performance are lens selection, camera selection, and method of illumination. Higher order local autocorrelational (HLAC) masks are used to extract features from images. Combining these features with multivariate analysis, which is a two-step feature extraction method, results in a powerful tool for extracting general information from images. In our procedures, a set of these features provides a 33-dimensional vector. To identify and count zooplankton, canonical correlation analysis and discrimination analysis are performed. This allows zooplankton to be counted and classified into taxonomic units, Another canonical correlation analysis was made for the sizing of the plankton. Proof of the principle experiment is obtained with images of both preserved and living Copepoda.
引用
收藏
页码:97 / 104
页数:8
相关论文
共 14 条
[1]  
Akaho S, 1993, B ELECTROTECHNICAL L, V57, P973
[2]  
AKIBA T, 1997, P OCEANS 97, P655
[3]  
BERMAN MS, 1990, LARGE MARINE ECOSYST, P121
[4]  
CHEDI K, 1986, INT C AC SPEECH SIGN, P1477
[5]   Rapid visualization of plankton abundance and taxonomic composition using the Video Plankton Recorder [J].
Davis, CS ;
Gallager, SM ;
Marra, M ;
Stewart, WK .
DEEP-SEA RESEARCH PART II-TOPICAL STUDIES IN OCEANOGRAPHY, 1996, 43 (7-8) :1947-1970
[6]   MICROAGGREGATIONS OF OCEANIC PLANKTON OBSERVED BY TOWED VIDEO MICROSCOPY [J].
DAVIS, CS ;
GALLAGER, SM ;
SOLOW, AR .
SCIENCE, 1992, 257 (5067) :230-232
[8]   AUTOMATED SIZING, COUNTING AND IDENTIFICATION OF ZOOPLANKTON BY PATTERN-RECOGNITION [J].
JEFFRIES, HP ;
BERMAN, MS ;
POULARIKAS, AD ;
KATSINIS, C ;
MELAS, I ;
SHERMAN, K ;
BIVINS, L .
MARINE BIOLOGY, 1984, 78 (03) :329-334
[9]  
Kurita T, 1992, P INT PATT REC HAG, V2, P213
[10]  
Otsu N., 1988, Proceedings of IAPR Workshop on Computer Vision: Special Hardware and Industrial Applications, P431