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Color Vision System for Estimating Citrus Yield in Real-time

59

Citations

14

References

2004

Year

Abstract

A machine vision system utilizing color vision was investigated as a means to identify citrus fruitsand to estimate yield information of the citrus grove in real-time. Images were acquired for 98 citrus trees in acommercial grove located near Orlando, Florida. The trees were distributed over 48 plots evenly. Images weretaken in stationary mode using a machine vision system consisting of a color analog camera, a DGPS receiver,and an encoder. Non-overlapping images of the citrus trees were taken by determining the field of view of thecamera and using an encoder to measure the traveled distance to locate the next position for acquiring animage. The threshold of segmentation of the images to recognize citrus fruits was estimated from the pixeldistribution in the HSI color plane. A computer vision algorithm to enhance and extract information from theimages was developed. The total time for processing an image was 119.5 ms, excluding image acquisitiontime. The image processing algorithm was tested on 329 validation images and the R2 value between thenumber of fruits counted by the fruit counting algorithm and the average number of fruits counted manually was0.79. Images belonging to a same plot were grouped together and the number of fruits estimated by the fruitcounting algorithm was summed up to give the number of fruits/plot estimates. Leaving out outliers andincomplete data, the remaining 44 plots were divided into calibration and validation data sets and a model wasdeveloped for citrus yield using the calibration data set. The R2 value between the number of fruits/plot countedby the yield prediction model and the number of fruits/plot counted by hand harvesting for the validation dataset was 0.53.

References

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