How machine vision helps automate lettuce harvesting

Listen to this article

Voiced by Amazon Polly
lettuce harvesting

The prototype lettuce harvesting robot | Source: IDS Imaging

Lettuce is a valuable crop in Europe and the USA, but labor shortages make it difficult to harvest this valuable field vegetable, as sourcing sufficient seasonal labor to meet harvesting commitments is one of the sector’s biggest challenges. Moreover, with wage inflation rising faster than producer prices, margins are very tight.

In England, agricultural technology and machinery experts are working with IDS Imaging Development Systems GmbH, based in Obersulm, Germany, to develop a robotic solution to automate lettuce harvesting. The team is working on a project funded by Innovate UK and includes experts from the Grimme agricultural machinery factory, the Agri-EPI Centre in Edinburgh, UK, Harper Adams University in Newport, UK, the Centre for Machine Vision at the University of the West of England in Bristol and two of the UK’s largest salad producers, G’s Fresh and PDM Produce.

Within the project, existing leek harvesting machinery is adapted to lift the lettuce clear from the ground and grip it in between pinch belts. The lettuce’s outer, or ‘wrapper’, leaves will be mechanically removed to expose the stem. Machine vision and artificial intelligence are then used to identify a precise cut point on the stem to neatly separate the head of lettuce.

“The cutting process of an iceberg is the most technically complicated step in the process to automate, according to teammates from G subsidiary Salad Harvesting Services Ltd.,” IDS Product Sales Specialist Rob Webb said. “The prototype harvesting robot being built incorporates a GigE Vision camera from the uEye FA family. It is considered to be particularly robust and is therefore ideally suited to demanding environments. “As this is an outdoor application, a housing with IP65/67 protection is required here.”

lettuce harvesting

Machine vision and AI are used to determine the intersection point on the stem. | Source: IDS Imaging

The choice fell on the GV-5280FA-C-HQ model with the compact 2/3″ global shutter CMOS sensor IMX264 from Sony.

“The sensor was chosen mainly because of its versatility. We don’t need full resolution for AI processing, so sensitivity can be increased by binning. The larger sensor format means that wide-angle optics are not needed either,” Rob Webb said.

The prototype of the robotic mower will be used for field trials in England towards the end of the 2021 season.

“We are delighted to be involved in the project and look forward to seeing the results. We are convinced of its potential to automate and increase the efficiency of the lettuce harvest, not only in terms of compensating for the lack of seasonal workers,” Jan Hartmann, Managing Director of IDS Imaging Development Systems GmbH, said.

The challenges facing the agricultural sector are indeed complex. According to a forecast by the United Nations Food and Agriculture Organisation (FAO), agricultural productivity will have to increase by almost 50% by 2050 compared to 2012 due to the dramatic increase in population. Such a yield expectation means an enormous challenge for the agricultural industry, which is still in its infancy in terms of digitalization compared to other sectors and is already under high pressure to innovate in view of climatic changes and labor shortages.

The agriculture of the future is based on networked devices and automation. Cameras are an important building block, and artificial intelligence is a central technology here. Smart applications such as harvesting robots can make a significant contribution to this.

Credit: Source link

Comments are closed.