Title
Estimation of fruit locations in orchard tree canopies using radio signal ranging and trilateration.
Abstract
Fruit locations in trees are measured during harvest using radio signals and trilateration.Positioning errors in foliage were assessed using Monte Carlo simulation.Data were collected for 32,193 fruits in California pear and cling peach orchards.Measurement rate varied from 8 to 12 fruits per minute, with an average of 10.8.RMS and 90th percentile position errors were 15.7cm and 24.9cm respectively. The development of novel robotic harvesters could benefit significantly from a model-based design approach, in which harvesting performance metrics-such as fruit reachability and average pick-and-place cycle-are calculated via simulation, and are used to guide mechanical design. The actual spatial distributions of fruits on orchard trees are necessary for such an approach. Reported methods for measuring the locations of all fruits require several minutes per fruit, and, consequently, have been used only for very small numbers of trees. The novel method presented utilizes high-frequency radio signals and trilateration to measure the locations of all fruits in canopies, at speeds that are significantly higher than those of existing methods. More specifically, a fruit picker wears gloves on which an antenna has been attached. A mobile trailer carries four radio beacons that measure and log their distances from the antenna on each glove, every time a fruit is grasped to be picked. The coordinates of each glove are computed with respect to a coordinate frame attached to the trailer, and the fruit position is approximated by these coordinates. Data from an RTK-GPS and an inclinometer on the trailer are used to compute georeferenced fruit coordinates. Data were collected for 32,193 fruits in eight California pear and cling peach orchards. The measurement rate varied from approximately 8-12 fruits per minute, with an average of 10.8, which is a magnitude faster than existing reported methods. In open space, the root mean square error between the estimated and true distance (DRMS) in the system's measurement volume was measured to be 10.3cm. The error's 90th percentile (R90) was 13.1cm. In the periphery of and inside canopies, these errors were calculated via Monte Carlo simulation to be equal to 15.7cm and 24.9cm respectively. The horizontal accuracies (across and along the row), and the vertical accuracy were 9.6cm, 4.3cm and 5.7cm respectively. The corresponding worst-case relative accuracies were 2.7%, 1.6%, and 3.4%, and were calculated by dividing each accuracy component by the distance between the fruits that were as far away as possible from each other along the corresponding axis. Finally, fruit position statistics, such as fruit elevation and horizontal distance from the row centers were computed and reported for a set of pear trees. Such data can be very useful for growers and for model-based design of harvesting machinery.
Year
DOI
Venue
2016
10.1016/j.compag.2016.05.004
Computers and Electronics in Agriculture
Keywords
Field
DocType
Mechanization,Specialty crops,Orchards,Fruit localization
Orchard,Mean squared error,Inclinometer,Ranging,Artificial intelligence,Percentile,Trilateration,Computer vision,Simulation,Engineering,Statistics,Electric beacon,Trailer
Journal
Volume
Issue
ISSN
125
C
0168-1699
Citations 
PageRank 
References 
0
0.34
3
Authors
4