Author :
Powell, Jesse R. ; Krotosky, Stephen ; Ochoa, B. ; Checkley, Dave ; Cosman, Pam
Author_Institution :
Res. Assoc. Scripps Instn. of Oceanogr., California Univ., San Diego, CA, USA
Abstract :
Summary form only given. The Real-time Flow Imaging and Classification System was designed to identify and count fish eggs in the Continuous Underway Fish Egg Sampler. Such data are used to assess the distribution and abundance of fish eggs for both basic (e.g. spawning stock size estimation) and applied (e.g. spawning habitat assessment) research. Here, we present the further development of REFLICS and its use during an oceanographic cruise to study eggs of Pacific sardine (Sardinops sagax) off Southern California. REFLICS is an image acquisition and processing system that now consists of a digital line-scan camera, illuminator, flow cell, pump, and computer with image acquisition hardware and custom software for acquisition, segmentation, and classification of imaged objects. Object characterizing features, such as size, shape, and shading, are computed for sardine eggs, copepods, and bubbles detected in the segmented images. These features comprise a training set for input into the Classification and Regression Tree (CART) algorithm. CART uses these features to create a decision tree that can accurately classify the desired objects. Simultaneous to REFLICS operation, fish eggs and other plankton are collected and ancillary data logged, including time, position, temperature, salinity, and chlorophyll a fluorescence. REFLICS and CUFES were used April 4-19, 2003, on the R/V Roger Revelle (http://swfsc.nmfs.noaa.gov/frd/CalCOFI/CurrentCruise/currentcruise.htm). 583423 REFLICS images were segmented during 92 CUFES sample intervals of 30 min each, in which 9987 sardine eggs were microscopically enumerated by experts. We present results of REFLICS classification of segmented images and their comparison with shipboard microscopic counts. We also discuss the implications of the routine, real-time sensing of fish eggs and other variables continuously from a moving ship, including high resolution and adaptive sampling and relational databases.
Keywords :
aquaculture; data acquisition; image classification; oceanographic techniques; oceanography; AD 2003 04 04 to AD 2003 04 19; Classification Regression Tree algorithm; Continuous Underway Fish Egg Sampler; REFLICS classification; Real time Flow Imaging Classification System; Roger Revelle; Sardinops sagax; Southern California; chlorophyll fluorescence; copepods; count fish eggs; custom software; digital line-scan camera; fish eggs; flow cell; illuminator; image acquisition; machine vision system; oceanographic cruise; plankton; pump; real time sensing; salinity; sardine eggs; segmentation; segmented images; shipboard microscopic counts; spawning habitat assessment; spawning stock size estimation; Classification tree analysis; Digital cameras; Hardware; Image segmentation; Machine vision; Marine animals; Microscopy; Object detection; Real time systems; Shape;