Identification of pruning branches in tall spindle apple trees for automated pruning

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Abstract

Pruning is a labor intensive operation that constitutes a significant component of total apple production cost. As growers are adapting simpler, narrower, more accessible and productive (SNAP) tree architectures such as the tall spindle fruiting wall system, new opportunities have emerged to reduce pruning cost and labor through automated pruning. This work focused on identification of pruning branches on apple trees in a tall spindle architecture. A time-of-flight-of-light-based three dimensional (ToF 3D) camera was used to construct 3D skeletons of apple trees. Pruning branches were identified in the reconstructed trees using a simplified two-step pruning rule; (i) maintain specified branch spacing and (ii) maintain specified branch length. Performance of the algorithm was optimized using a training sample of 10 trees to achieve human worker's pruning level. With a selected branch spacing (28. cm) and branch length (20. cm), the algorithm achieved 19.5% branch removal with the training dataset and 19.8% of branch removal with the validation dataset (10 trees) compared to 22% average branch removal by workers. Root Mean Square Deviation (RMSD) between human and algorithm in number of branches identified for pruning was 10% for the training dataset and 13% for the validation dataset. The algorithm and the human pruning resulted in similar average branch spacing. The algorithm maintained an average spacing of 35.7. cm for validation set whereas the average spacing for three workers was 33.7. cm. RMSD in branch spacing between the algorithm and the workers was found to be 13%. The algorithm removed 85% of long branches whereas the overlapping branch removal was only 69%. With some additional work to improve the performance in terms of overlapping branch removal, it is expected that this work will provide a good foundation for automated pruning of tall spindle apple trees in the future. © 2014 Elsevier B.V.

Figures

  • Fig. 1. Image of the tall spindle fruiting wall apple orchard in Prosser, WA that was used in the study.
  • Fig. 2. Imaging platform, (a) user interface computer and a 3D camera mounted on a pan-and-tilt system, and (b) imaging system in a tall spindle apple orchard.
  • Fig. 3. Pruning branches in two sample images/trees tagged by three different workers (worker1 – red; worker2 – blue; worker3 – green). (For interpretation of the references to colour in this figure legend, the reader is referred to the web version of this article.)
  • Fig. 4. Accuracy of the branch identification algorithm; (a) actual branches on the tree and identified branches; and (b) distribution of branch identification accuracy (BIA). In Fig a, ‘total branches on tree’ represents the number of actual branches in individual trees, ‘Total Branches Detected’ represents the number of branches identified by the algorithm (including false positives) and ‘actual branches detected’ represents the number of actual branches identified by the algorithm.
  • Table 1 Number of actual branches, number of actual branches identified by the algorithm and number of pruning branches identified by three workers for 20 trees studied in this research.
  • Fig. 5. Surface plot of the objective function used to optimize pruning parameters (start-point branch spacing and branch length). The surface has a concave structure with an apparent global minimum within the parameter ranges evaluated.
  • Fig. 6. Net Pruning Branch Proportion (NPBP) for different combinations of branch lengths and start-point branch spacing values.
  • Table 2 Performance of pruning branch identification algorithm with the optimal parameter combi dataset of 10 trees.

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CITATION STYLE

APA

Karkee, M., Adhikari, B., Amatya, S., & Zhang, Q. (2014). Identification of pruning branches in tall spindle apple trees for automated pruning. Computers and Electronics in Agriculture, 103, 127–135. https://doi.org/10.1016/j.compag.2014.02.013

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