Please help us gauge adoption but completing this survey, created by Mauricio Guerra Funes, a PhD student with Dr. Miguel Gomez in the Charles H. Dyson School of Applied Economics and
Management at Cornell University. You can reach Mauricio at mg2344@cornell.edu.
by Luis Gonzalez Nieto, Anna Wallis, Jon Clements, Mario Miranda Sazo, Craig Kahlke, Thomas M. Kon, and Terence L. Robinson
Edited by Mike Basedow, the full original article can be accessed here.
Precision crop load management of apple requires measuring trunks, counting flowers, fruitlets, or fruit at various times during the year to guide management decisions. While previous studies have found ways to incorporate these manual measurements into helpful orchard tools, time has often been a limiting factor in the adoption of these practices. There are an increasing number of tech companies working in agriculture that are incorporating these models into their portfolio. Our hopes are that the time required to collect the necessary data can be minimized so that more growers can have actionable information to manage their orchard more precisely.
“Agtech, short for agriculture technology, is a growing industry that’s using data tools and software to help farmers improve yields and use fewer resources.
“With population growth increasing the global demand for food and climate change hurting crop yields, a swift adoption of agtech may be needed now more than ever. Yet, farmers are hesitant about embracing these new technologies.
“What’s in the way of farmers quickly adopting agtech, and how can the industry get more farmers on board?
“Marketplace” host Kai Ryssdal talked to reporter Belle Lin from the Wall Street Journal about her recent article on why so few farmers are using agtech. Below is an edited transcript of their conversation.”
by Luis Gonzalez Nieto 1, Anna Wallis 2, Jon Clements 3, Mario Miranda Sazo 4, Craig Kahlke 4, Thomas M. Kon 5 and Terence L. Robinson 1
1 Horticulture Section, School of Integrative Plant Science, Cornell University, Geneva, NY 14456, USA 2 Extension Section, Michigan State University, Grand Rapids, MI 49503, USA 3 UMass Extension Section, University of Massachusetts, Belchertown, MA 01007, USA 4 Cornell Cooperative Extension, Lake Ontario Fruit Program, Albion, NY 14411, USA 5 Mountain Horticultural Crops Research and Extension Center, Department of Horticultural Sciences, North Carolina State University, Mills River, NC 28759, USA
Precision crop load management of apple requires counting fruiting structures at various times during the year to guide management decisions. The objective of the current study was to evaluate the accuracy of and compare different commercial computer vision systems and computer applications to estimate trunk cross-sectional area (TCSA), flower cluster number, thinning efficacy, and yield estimation. These studies evaluated two companies that offer different vision systems in a series of trials across 23 orchards in four states. Orchard Robotics uses a proprietary camera system, and Pometa (previously Farm Vision) uses a cell phone camera system. The cultivars used in the trials were ‘NY1’, ‘NY2’, ‘Empire’, ‘Granny Smith’, ‘Gala’, ‘Fuji’, and ‘Honeycrisp’. TCSA and flowering were evaluated with the Orchard Robotics camera in full rows. Flowering, fruit set, and yield estimation were evaluated with Pometa. Both systems were compared with manual measurements. Our results showed a positive linear correlation between the TCSA with the Orchard Robotics vision system and manual measurements, but the vision system underestimated the TCSA in comparison with the manual measurements (R2s between 0.5 and 0.79). Read more here…
Harry Freeman1, Mohamad Qadri1, Abhisesh Silwal1, Paul O’Connor2, Zachary Rubinstein1, Daniel Cooley2, and George Kantor1
1Carnegie Mellon University Robotics Institute, PA, USA
2University of Massachusetts Amherst Stockbridge School of Agriculture, MA, USA
Abstract – Measuring growth rates of apple fruitlets is important because it allows apple growers to determine when to apply chemical thinners to their crops to optimize yield. The current practice of obtaining growth rates involves using calipers to record sizes of fruitlets across multiple days. Due to the number of fruitlets needed to be sized, this method is laborious, timeconsuming, and prone to human error. In this paper, we present a computer vision approach to measure the sizes and growth rates of apple fruitlets. With images collected by a hand-held stereo camera, our system detects, segments, and fits ellipses to fruitlets to measure their diameters. To measure growth rates, we utilize an Attentional Graph Neural Network to associate fruitlets across different days. We provide quantitative results on data collected in an apple orchard, and demonstrate that our system is able to predict abscise rates within 3% of the current method with a 7 times improvement in speed, while requiring significantly less manual effort. Moreover, we provide results on images captured by a robotic system in the field, and discuss the next steps to make the process fully autonomous.
Anna Wallis, Jon Clements, Mario Miranda Sazo, Craig Kahlke, Karen Lewis, Tom Kon, Luis Gonzalez, Yu Jiang and Terence Robinson
Reprinted from Fruit Quarterly, Volume 31, Number 1, Spring 2023
Decades of work have demonstrated that PACMAN (Precision Apple Crop load MANagement) is an extremely effective method for successfully managing crop load. Effective crop load management has a direct effect on yield, quality, size, and return bloom, and ultimately an orchard’s profitability. The process involves three management practices: 1) pruning, 2) chemical thinning, and 3) hand thinning, which have been described in detail in previous articles (Robinson et al., 2014a,b). We are continuing to refine recommendations for PACMAN, on a regional basis, as part of a 4-year national project, funded by the USDA-NIFA SCRI. This article is a follow-up to our previous article summarizing earlier work on this project (Robinson et al., 2022).
Beyond Commercialization – Engineering Research for Crop Load Management
March 9 @ 9:00 am – 11:00 am (Pacific Time)
This session provides updates on engineering-related research that looks to the future for apple crop load management. See what is being developed for further sensing and automation to assist with orchard production. Presentations are provided by researchers at Cornell University, Penn State, University of Florida, and Moog, Inc. These will be in a short 10-minute format, with time for questions and discussions at the end.
Introduction
Karen Lewis, Agriculture and Natural Resources Program Unit Director, Tree Fruit Extension Specialist, Washington State University
3D Imaging and Digital Twin for Specialty Crops
Yu Jiang, Assistant Research Professor, Agritech, Cornell University
Crop Load Adjustment Based on Early Flower Bud Detection
Long He, Assistant Professor of Agricultural and Biological Engineering, Rashmi Sahu, Graduate Student Paul Heinemann, Professor of Agricultural and Biological Engineering, Penn State
Improving Apple Harvest with the Latest in AI Yield Estimation for Specialty Crops
Dana Choi, Assistant Professor of Agricultural Engineering, University of Florida
Moog’s Autonomous Journey: “Agriculture Is the Lynch Pin”
Chris Layer, Mgr. Technology & Advanced Pursuits, and Tom Fischer – Moog Inc.
“Identification of individual king flowers within flower clusters is a critical step for developing a robotic apple pollination system. Typically, each cluster has five to six individual flowers, and the king flower can be occluded by the lateral flowers because of their central position in a flower cluster. King flowers share identical features (e.g., color, shape, and size) with other flowers. Apple flower clusters open sequentially from the king flower to the lateral flowers in the time of anthesis, which presents an opportunity for selective pollination. Therefore, it is critical to monitor the flower blooming stage for accurately determining the pollination targets and timing…”
Xinyang Mu, Long He, Paul Heinemann, James Schupp, and Manoj Karkee
Today’s Guests: Oli Hilbourne (Outfield); Jenny Lemieux (Vivid Machines); Karina Lau (AgerPix); Steve Mantle (Innov8); Mauricio Guerra Funes (Cornell University)
00:45:26 GK: Any use of drones for pest scouting? 00:45:53 BA: How big does fruiot have to be to detect in mm 00:46:35 BA: How small can you define a zone to 2′? 00:46:35 MJM: Is the drone useful for all training systems? 00:46:58 JC: Can the drones fly approx. 2m off the ground between rows to take sideview photos of the tree (for flower and fruitlet counts) 00:47:25 LS: How does your drone technology handle adverse weather conditions such as high winds and heavy rain? 00:49:12 Oli Hilbourne | Outfield: Hi Bruce. The fruit needs to be 40mm or about 1 inch in diameter to be picked up with the Outfield system. We can count from from 40mm right up to harvest. 00:50:46 Oli Hilbourne | Outfield: Hi Md Jebu. The drone works on trellis wall and super spindle growing systems. This year we will be demonstrating the system on V trellis and V4 systems. 00:53:11 Oli Hilbourne | Outfield: Hi John. We typically fly around 10-12m above the ground to survey the crops. We are always looking at higher resolution cameras, as as those become more common hopefully we will be able to pick up fruit earlier and earlier, right up to fruitlet counting. At the moment its only blossom cluster mapping and fruit counting from 40mm diameter and larger. 00:55:05 Oli Hilbourne | Outfield: Hi Lina. The drone works well in all lighting conditions, and being based in the UK we have plenty of examples of rainy conditions to train on! The drones don’t fly in the rain, and you shouldn’t fly in winds of 20 mph or more. 00:55:34 LS: Reacted to “Hi Lina. The drone w…” with 👍 00:56:49 JC: Jenny – what is the smallest fruit size your camera can measure? 00:57:17 RM: Do you have grower in Quebec 00:58:51 MJM: Hi Jenny, how about the price of the camera? 00:59:13 RF: Jenny- Have you started work on canopy density 01:03:39 Jenny Lemieux | Vivid Machines: Hi MJM – we lease the sensor for $5k/yr, and charge $60/acre for the predictions and services. 01:04:44 Jenny Lemieux | Vivid Machines: Hi Rod – we haven’t built a model yet for canopy density, mostly because we need to determine how to define it (per block, or variety, per farm.. ). but we have the data needed and it’s on the list! We just need help with thinking through what to present. 01:08:15 SB: How many dendrometers have been deployed in one orchard to get accurate growth curves? Or is there a recommendation of number of units per acre? 01:09:54 SB: Replying to “How many dendrometer…” answer: 6 units/hectare 01:11:10 LCF: Replying to “How many dendrometer…” Always depends on the species, the age, etc. One antenna covers around 50 Has. 01:24:43 RM: hi Jenny I assume that we must drive each sides of the row to have accurate data. What is the max speed of the 4 Wheel to obtain good results 01:26:04 IL: Hi Robert, yes driving both sides of the row is key to obtain a holistic view of your block. The Green Atlas cartographer can be driven at speeds of 25mph 01:26:29 AAK: Hi 01:28:30 Jenny Lemieux | Vivid Machines: hi Jenny I assume that we must drive each sides of the row to have accurate data. What is the max speed of the 4 Wheel to obtain good results Hi RM – no, just one side. One of the algorithms in our pipeline deals with occlusion so that we can predict from the one side. Max speed is 10 km/hr, though on 3 and 4 leaf trees, a little slower, 5-7km is currently working better (though I expect we’ll solve that before April) 01:35:38 HGT: Does any of the speakers do the imaging/dat collection by aerial application? 01:38:20 Steve Mantle: HGT – partnerships roadmapped for innov8 – satellite (planet), flyover, drone (perhaps with some of the PACMAN presenters). Our belief is none of these systems are a one size fits all; and each of these methodologies (including handheld data capture) have a place to complement depending on extent of variability and need to scale. 01:39:03 Oli Hilbourne | Outfield: Hi HGT. Outfield uses drones to gather imagery data, we use that to create blossom loading maps, fruit counts and yield estimates. We use off the shelf consumer drones that growers can fly on demand. I was the first speaker on today’s call, I think there will be a video available later but I’m happy to follow up directly if you like. 01:40:42 HGT: my apology: clarification I am thinking fixed wing aircraft, helicopter or satellite. , not drones. 01:41:12 Oli Hilbourne | Outfield: Ah, no problem! 01:43:08 SB: Accuracy 01:43:22 AKL: On point 01:43:35 RK: total cost of ownership needs to be added 01:43:41 JMR: Results delivered in a timely manner 01:43:57 SB: Durability (could be considered ease of use) 01:44:00 SB: I think how the various technologies integrate with the others (new or existing ones) is important 01:44:26 JL: Net profit results 01:44:40 KB: what info we can gather – precision thinning vs final yields 01:45:47 SB: everybody is working on adding new tools, but each living in its own space, with no common/shared way of communicating with other tools or existing dataset 01:46:49 SB: yes 01:46:56 Steve Mantle: SB – PRECISELY. That’s our focus – bringing together data siloes (selectively, without it being too crazy!) 01:47:24 HGT: cost benefit analysis 01:47:45 SB: Units of cost is also important like is it per user, per acre, per year, etc. 01:47:46 Karen Lewis: Reacted to “everybody is working…” with 👍🏻 01:48:31 Steve Mantle: API availability for data flow is critical. 01:48:32 SB: Steve, I have a feeling no one company can solve this issue, but there should be an effort among tech companies to define a common ground, some standards 01:48:32 HGT: again: cost benefit analysis 01:48:55 HGT: it is all about DATA and their benefit 01:49:15 JL: Different for each 01:49:15 SB: mmmmm….maybe 100-500 01:49:17 Steve Mantle: SB – 100% agree. Getting us all oaring the right direction and aligning on common items like task maps are key. 01:50:20 RK: based on only 1 factor, is not too helpful for me.I want to see the overall picture. Chemical savings, environmental benefits….. 01:50:39 HGT: yes 01:50:44 SB: yes 01:50:54 JL: Yes 01:50:56 MJM: yes 01:50:59 AAK Dyes 01:51:06 ADR: turn on and receive data 01:51:14 DVW: Yes 01:51:26 JMR: Reacted to “turn on and receive …” with 👍 01:51:28 RK: Turn on and receive data if I can massage raw data for my use. 01:52:56 JL: Thanks for these sessions. Very enlightening! 01:53:49 Steve Mantle: Hats off to the organizing team for this series, and the tons of work you’re doing behind the scenes. 01:53:53 Craig Kahlke: Past PACMAN Meetups (Jan 12., 19, and today’s in the coming days): https://www.youtube.com/playlist?list=PLajA3BBVyv1zc9xkiCSPqj3rEjW2vJ4Yb 01:54:17 Oli Hilbourne | Outfield: Thank you very much to the organising team for putting this all together, and thank you for the invite to speak today! 01:54:37 Craig Kahlke: W NY Fruit Conference – “State of the Industry” Feb 27-8 Rochester, NY https://lof.cce.cornell.edu/event.php?id=1729 01:55:04 AKL: thank you PACMAN Extension team 01:55:15 Anna Wallis: Link to the PACMAN website for additional project updates: https://pacman.extension.org/ 01:55:19 Jenny Lemieux | Vivid Machines: Thanks everyone! 01:55:26 Karen Lewis: https://www.innov8.ag/smartorchard 01:55:27 GS: thx!! 01:55:29 SB: will you have web connection for the conference? 01:55:39 ADR: thanks! 01:55:45 Steve Mantle: Yes – would love to engage more providers in smart orchard 🙂 01:55:58 RK: thank you all 01:56:03 MG: Thank you ! 01:56:49 SB: is there a newsletter for the PACMAN project? 01:56:56 Steve Mantle: Where do we subscribe to the quarterly? 01:57:13 Karen Lewis: Replying to “is there a newslette…” Pacman website – no newsletter 01:57:33 Jon Clements: No newsletter, website pacman.extension.org has blog/post updates 01:57:51 Anna Wallis: https://nyshs.org/fruit-quarterly/ 01:57:51 SB: Reacted to “No newsletter, websi…” with 👍🏻 01:58:03 Steve Mantle: Reacted to “https://nyshs.org/fr…” with 😁 01:58:15 SB: thanks! 01:59:26 Steve Mantle: Turning around the links of recordings in 24 hours is awesome; thank you! 01:59:49 AAK Thankfully
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