Article ID Journal Published Year Pages File Type
84997 Computers and Electronics in Agriculture 2009 8 Pages PDF
Abstract

The goal of this study was to develop an image processing method to detect green citrus fruit in individual trees. This technology can be applied for crop yield estimation at a much earlier stage of growth, providing many benefits to citrus growers. A hyperspectral camera of 369–1042 nm was employed to acquire hyperspectral images of green fruits of three different citrus varieties (Tangelo, Valencia, and Hamlin). First, a pixel discrimination function was generated based upon a linear discriminant analysis and applied to all pixels in a hyperspectral image for image segmentation of fruit and other objects. Then, spatial image processing steps (noise reduction filtering, labeling, and area thresholding) were applied to the segmented image, and green citrus fruits were detected. The results of pixel identification tests showed that detection success rates were 70–85%, depending on citrus varieties. The fruit detection tests revealed that 80–89% of the fruit in the foreground of the validation set were identified correctly, though many occluded or highly contrasted fruits were identified incorrectly.

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Physical Sciences and Engineering Computer Science Computer Science Applications
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