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Cut-Edge Detection Method for Rice Harvesting Based on Machine Vision

Zhenqian Zhang, Ruyue Cao, Cheng Peng, Renjie Liu, Yifan Sun, Man Zhang, Han Li

2020Agronomy22 citationsDOIOpen Access PDF

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 was found in each row. The hierarchical clustering method was used to extract the outliers. At last, the polynomial fitting method was used to acquire the straight or curved cut-edge. The results gained from the samples showed that the average error for locating the cut-edge was 2.84 cm. The method was capable of providing support for the automatic navigation of a combine harvester.

Topics & Concepts

Artificial intelligenceComputer visionYCbCrComputer scienceGrayscaleMachine visionEnhanced Data Rates for GSM EvolutionFeature (linguistics)Projection (relational algebra)Canny edge detectorOutlierEdge detectionRegion of interestPoint (geometry)Cluster analysisNoise (video)Pattern recognition (psychology)DBSCANMathematicsPixelImage processingImage (mathematics)Color imageAlgorithmFuzzy clusteringCanopy clustering algorithmPhilosophyGeometryLinguisticsSmart Agriculture and AIIndustrial Vision Systems and Defect DetectionAdvanced Measurement and Detection Methods
Cut-Edge Detection Method for Rice Harvesting Based on Machine Vision | Litcius