Harvesting labor is a major cost factor in the production of specialty crops. Today accruing harvest labors is still done by hands, which is error-prone and costly. By integrating cloud-based web application with purposely designed labor monitoring devices (LMDs), we developed a harvest management system for monitoring and accruing harvest labors. The system comprises of two major components: an in-orchard data collection network collecting harvest data and transmitting them to a cloud-based labor management software (LMS); and, LMS processing harvest data and delivering results to users via a tablet-friendly web interface. Using a patented technology, the system accurately accrues harvest labor activities for multiple orchards, even under complex many-to-many employment relations. The system provides multi-fold benefits to stakeholders of specialty crop harvesting: a picker can be compensated accurately by the actual weight of the fruits he picked; and an orchard manager may monitor labor activities in real time and improve his orchard operation based on the analytical reports generated by the system. The dynamic resource allocation provided by a cloud computing platform ensures that the system can handle the fluctuating demand for processing real-time harvest data during and off harvest seasons. The design of the system is optimized for cloud computing, improving the access to orchard data while preserving their privacy for growers. A prototype of the system has been validated in field tests in United States' Pacific Northwest Region.
[1]
Li Tan,et al.
An integrated cloud-based platform for labor monitoring and data analysis in precision agriculture
,
2013,
2013 IEEE 14th International Conference on Information Reuse & Integration (IRI).
[2]
Victor Alchanatis,et al.
Study on temporal variation in citrus canopy using thermal imaging for citrus fruit detection
,
2008
.
[3]
Michael Bächle,et al.
Ruby on Rails
,
2006,
Softwaretechnik-Trends.
[4]
Shiv O. Prasher,et al.
ESTIMATION OF CROP BIOPHYSICAL PARAMETERS THROUGH AIRBORNE AND FIELD HYPERSPECTRAL REMOTE SENSING
,
2003
.
[5]
Li Tan,et al.
Cloud-based monitoring and analysis of yield efficiency in precision farming
,
2014,
Proceedings of the 2014 IEEE 15th International Conference on Information Reuse and Integration (IEEE IRI 2014).
[6]
Achim Dobermann,et al.
Geostatistical Integration of Yield Monitor Data and Remote Sensing Improves Yield Maps
,
2004
.
[7]
Ofer Levi,et al.
Detection of Green Apples in Hyperspectral Images of Apple-Tree Foliage Using Machine Vision
,
2007
.