Computer vision for fruit harvesting robots state of the art and challenges ahead
Keren Kapach, Ehud Barnea, Rotem Mairon, Yael Edan, Ohad Ben‐Shahar
- 发表年份
- 2012
- 引用次数
- 228
摘要
Despite extensive research conducted in machine vision for harvesting robots, practical success in this field of agrobotics is still limited. This article presents a comprehensive review of classical and state-of-the-art machine vision solutions employed in such systems, with special emphasis on the visual cues and machine vision algorithms used. We discuss the advantages and limitations of each approach and we examine these capacities in light of the challenges ahead. We conclude with suggested directions from the general computer vision literature which could assist our research community meet these challenges and bring us closer to the goal of practical selective fruit harvesting robots.
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