| Literature DB >> 29977571 |
André F Colaço1,2, José P Molin1, Joan R Rosell-Polo3, Alexandre Escolà3.
Abstract
Ultrasonic and light detection and ranging (LiDAR) sensors have been some of the most deeply investigated sensing technologies within the scope of digital horticulture. They can accurately estimate geometrical and structural parameters of the tree canopies providing input information for high-throughput phenotyping and precision horticulture. A review was conducted in order to describe how these technologies evolved and identify the main investigated topics, applications, and key points for future investigations in horticulture science. Most research efforts have been focused on the development of data acquisition systems, data processing, and high-resolution 3D modeling to derive structural tree parameters such as canopy volume and leaf area. Reported applications of such sensors for precision horticulture were restricted to real-time variable-rate solutions where ultrasonic or LiDAR sensors were tested to adjust plant protection product or fertilizer dose rates according to the tree volume variability. More studies exploring other applications in site-specific management are encouraged; some that integrates canopy sensing data with other sources of information collected at the within-grove scale (e.g., digital elevation models, soil type maps, historical yield maps, etc.). Highly accurate 3D tree models derived from LiDAR scanning demonstrate their great potential for tree phenotyping. However, the technology has not been widely adopted by researchers to evaluate the performance of new plant varieties or the outcomes from different management practices. Commercial solutions for tree scanning of whole groves, orchards, and nurseries would promote such adoption and facilitate more applied research in plant phenotyping and precision horticulture.Entities:
Year: 2018 PMID: 29977571 PMCID: PMC6026496 DOI: 10.1038/s41438-018-0043-0
Source DB: PubMed Journal: Hortic Res ISSN: 2052-7276 Impact factor: 6.793
Fig. 1Publication rate of reviewed studies
Fig. 2Measurements of canopy volume by ranging sensors. Example of ultrasonic (a) and LiDAR (b) sensors
Reports of input savings from the use of ultrasonic sensors to control real-time variable rate application of inputs
| Reference | Operation | Tree crop | Input savings |
|---|---|---|---|
| Giles et al.[ | Spraying | Peach | 28% |
| Giles et al.[ | Spraying | Apple | 52% |
| Moltó et al.[ | Spraying | Citrus | 30% |
| Moltó et al.[ | Spraying | Citrus | 37% |
| Zaman et al.[ | Fertilizing | Citrus | 40% |
| Solanelles et al.[ | Spraying | Olive | 70% |
| Solanelles et al.[ | Spraying | Pear | 28% |
| Solanelles et al.[ | Spraying | Apple | 39% |
| Gil et al.[ | Spraying | Vineyard | 58% |
| Gil et al.[ | Spraying | Vineyard | 22% |
| Maghsoudi et al.[ | Spraying | Pistachio | 34% |
| Average | 40% |
Fig. 33D point cloud generated by a mobile terrestrial laser scanner in a pear orchard; adapted from Rosell-Polo et al.[53]
Fig. 4Canopy volume estimation from 3D point clouds. Examples of discretization-based methods using cubes (a)[59] or prisms (b)[57] and by surface reconstruction algorithms (c and d)[58]