The effect of camera viewpoint and fruit orientation on the performance of a sweet pepper maturity level classification algorithm was evaluated. Image datasets of sweet peppers harvested from a commercial greenhouse were collected using two different methods, resulting in 789 RGB-Red Green Blue (images acquired in a photocell) and 417 RGB-D-Red Green Blue-Depth (images acquired by a robotic arm in the laboratory), which are published as part of this paper. Maturity level classification was performed using a random forest algorithm. Classifications of maturity level from different camera viewpoints, using a combination of viewpoints, and different fruit orientations on the plant were evaluated and compared to manual classification. Results revealed that: (1) the bottom viewpoint is the best single viewpoint for maturity level classification accuracy; (2) information from two viewpoints increases the classification by 25 and 15 percent compared to a single viewpoint for red and yellow peppers, respectively, and (3) classification performance is highly dependent on the fruit's orientation on the plant.
Viewpoint Analysis for Maturity Classification of Sweet Peppers.
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作者:Harel Ben, van Essen Rick, Parmet Yisrael, Edan Yael
| 期刊: | Sensors | 影响因子: | 3.500 |
| 时间: | 2020 | 起止号: | 2020 Jul 6; 20(13):3783 |
| doi: | 10.3390/s20133783 | ||
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