2020
DOI: 10.3390/agronomy10040590
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Cut-Edge Detection Method for Rice Harvesting Based on Machine Vision

Abstract: A cut-edge detection method based on machine vision was developed for obtaining the navigation path of a combine harvester. First, the Cr component in the YCbCr color model was selected as the grayscale feature factor. Then, by detecting the end of the crop row, judging the target demarcation and getting the feature points, the region of interest (ROI) was automatically gained. Subsequently, the vertical projection was applied to reduce the noise. All the points in the ROI were calculated, and a dividing point… Show more

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Cited by 17 publications
(10 citation statements)
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“…The pixel counts of binary image representing the crop would not yield the spatial localisation of EOR within a given image, while it only generates an EOR trigger based on the image. In contrast, the EOR detection method proposed by authors of [19] uses Cr channel of Y CbCr colour space to calculate the position of the EOR within a given image. Such methods pose the advantage of early detection and potential failures due to noisy images in the method presented in [18].…”
Section: Related Workmentioning
confidence: 99%
“…The pixel counts of binary image representing the crop would not yield the spatial localisation of EOR within a given image, while it only generates an EOR trigger based on the image. In contrast, the EOR detection method proposed by authors of [19] uses Cr channel of Y CbCr colour space to calculate the position of the EOR within a given image. Such methods pose the advantage of early detection and potential failures due to noisy images in the method presented in [18].…”
Section: Related Workmentioning
confidence: 99%
“…A classification accuracy of 82% is obtained for the harvesting and grading of lettuces. A pixel accumulation-based rice crop classification has been reported in [24]. A combination of two cameras was used for imaging and crop boundary estimation.…”
Section: Robotic Harvestingmentioning
confidence: 99%
“…For instance, Wang et al (2015) employed the K-means color clustering algorithm to extract the target region of an apple, followed by utilizing the rotational inertia method based on the apple's good symmetry to extract its symmetry axis and determine the harvesting point. Additionally, Zhang et al (2010) drew test lines from various contour points of the strawberry's profile to its centroid and then utilized the mirror-image matching method to determine the strawberry's fruit axis, thus obtaining the harvesting points. However, for the forked carrot, which exhibits variable and irregular shapes, there is currently no research available on the determination of trimming paths.…”
Section: Introductionmentioning
confidence: 99%