Biological Management of Rice Crop by using Contour Based Masking Technique

作者: Bharati Patel , Aakanksha Sharaff

DOI: 10.1109/ICPC2T48082.2020.9071511

关键词: Computer scienceAutomationField (computer science)Artificial intelligenceMasking (art)Image processingPattern recognitionFeature (computer vision)Feature extractionObject detectionIdentification (information)

摘要: Image processing is an extensive technique for the real time data set. It gives better result agriculture field in terms of yield prediction, plant species identification, early disease detection, soil minerals management, water level analysis and so on. Images are very useful feature extraction object but it requires high caliber images that features can be appropriately calculated. Plant essential direct automation phenotyping. Generally plants have like height calculation, shape size leaf analysis, color based density growth grain market prediction In this work management biological on has been discussed image regular measurement huge by using masking contour detection technique. Biological rice crop means interaction environment external changes plant. control use chemical free pesticides organism to secure cycle natural make a remark method automation. Therefore effort towards its

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