- Every crop is different! It goes without saying, but grapes are not tomatoes, and tomatoes are not corn. There are hundreds of different kinds of farms, ranging from trees to roots (and that’s not even including livestock and ranching). Each crop needs to be measured differently to generate actionable data. There is no universal crop survey solution, and it will probably be specialists in each particular crop type who ultimately deliver solutions to farmers.
- Multicopters, not planes. We started with fixed-wing UAVs, but quickly realized that most farms don’t have landing strips. Even short takeoff-and-landing planes get battered fast in regular use without dedicated landing areas, which few farms have. Meanwhile, multicopters, which can take off and land anywhere, are gaining endurance and can now fly for as much as 40 minutes and cover miles. Planes are only suited for the largest farms, and even then missions need to be planned very carefully to find places they can reliably land.
- Phones/tablets, not laptops. Farmers don’t want to drag laptops into the fields. Any drone that is expected to be used by regular consumers should be entirely operated by a standard Apple or Android smartphone or tablet.
- One-click auto missions, not “flying”. Likewise, farmers don’t want to have to fly things. Agricultural UAVs should be fully-autonomous, from takeoff to landing. The experience should be as simple as pressing a “Start” button on a phone and the drone flies the entire mission on its own.
- Fly the camera, not the aircraft: What the farmer is interested in is a picture — not the acquisition of the picture. Let sophisticated planning tools figure out precisely how to gather the right images, let autonomy take care of the nitty gritty details of flight dynamics, and let humans do what humans do best — specify high-level desires.
- Video can be worth more than stills. Don’t discount how good farmers are at spotting things with their own eyes. Sometimes a first-person-view live video feed will allow them to spot issues and direct the vehicle to more closely inspect the problem area. (Needless to say, this is only really practical with multicopters). Indeed, farmers may not even know what they’re looking for initially. Sometimes general situational awareness is the task, rather than delivering a specific data product (such as a mosaic).
- NDVI is surprisingly easy to do. The gold standard of crop surveying is a “Normalized Differential Vegetation Index”, which shows the difference between regular red light reflected from plants and near-infrared light. Healthy chlorophyll absorbs red and reflects near-IR, while damaged chlorophyll reflect both. It doesn’t take expensive cameras to gather this data. A regular camera slightly modified with a blue bit of plastic becomes a near-IR camera. Take a cheap consumer 3D camera with two lenses, modify one for near-IR, and you’ve got a NDVI camera for less than $200.
- Aim for crop consultants, not farmers. Most crop data services are provided by local consultants, such as agronomists, not the farmers themselves. At the moment, FAA regulations ban most commercial use of UAVs, defined as anything where money changes hands, so most are used by farmers themselves for their own purposes on their own land. But Congress has mandated that the FAA introduce regulations to allow wider commercial use by 2015 (although it will probably be later than that before this happens). At that point, expect most users to be those local service providers, not the farmers themselves.
- Time is money. Drones can get answers fast and cheaply, taking advantage of their “anywhere, anytime access to the sky” abilities. That means “timely data on time”, such as daily surveys to find exactly the right time to harvest. Likewise, changes over time can be equally illuminating. The aim of crop surveying is to show the farmers something they can’t see with their own eyes, and the time dimension is a great example of that. By doing regular crop surveys, say every day or week, and using software to highlight differences over time, it’s possible to zero in on growing differences between areas of a field, which may be directly correlated to productivity.
- Data can be marketing. Some seed companies already offer to do aerial crop surveys for free as part of a sales process, much as they once “walked the field” as part of a free crop analysis process. Similarly, crop survey data can do more than simply guide a farmer into making different crop management decisions. It can also allow the farmer to market their harvest more effectively, pitching such high-tech precision agriculture as a differentiating quality in a commodity field. If data-driven crop management lead farmers to use less chemicals and water, perhaps someday “drone-guided agricultural” will be something consumers could be willing to pay more for. Done right, big data agriculture means “greener” crops and food. If consumers will pay a premium for organic, why not for this?
(Source – http://robohub.org/ten-lessons-for-farm-drones/)
Ten lessons for farm drones обновлено: April 10, 2014 автором: