Crop positioning for robotic intra-row weeding based on machine vision
Abstract
Keywords: mechanical weeding, computer vision, real-time image processing, crop sensing, precision agriculture
DOI: 10.3965/j.ijabe.20150806.1932
Citation: Li N, Zhang C L, Chen Z W, Ma Z H, Sun Z, Yuan T, et al. Crop positioning for robotic intra-row weeding based on machine vision. Int J Agric & Biol Eng, 2015; 8(6): 20-29.
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