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Scientists to launch mobile app to detect potato blight at early stages
Scientists to launch mobile app to detect potato blight at early stages

Irish Examiner

time4 days ago

  • Health
  • Irish Examiner

Scientists to launch mobile app to detect potato blight at early stages

Potato blight, one of the world's most devastating crop diseases, could soon be detected using mobile phones, thanks to a new app being developed by Welsh scientists. Spearheaded by a research team at Aberystwyth University, the DeepDetect project aims to develop a mobile phone app that uses artificial intelligence to provide early warnings of diseases in potatoes. Potato crops are highly susceptible to diseases caused by pathogens such as fungi, bacteria, viruses, and nematodes. Late blight, caused by Phytophthora infestans, can wipe out entire fields, and lead to enormous costs and food shortages. It is responsible for 20% of potato crop losses and €4bn in economic losses worldwide. Traditionally, disease detection in crops has relied on manual inspection, a method that is time-consuming, expensive, and often subjective. DeepDetect aims to change that by harnessing the power of machine learning to deliver accurate diagnoses directly to farmers' smartphones. Dr Edore Akpokodje, a lecturer in computer science at Aberystwyth University, said: 'Our goal is to empower farmers with a tool which is not only scientifically robust but also practical and easy to use, and which delivers instantaneous, location-specific disease forecasts straight to their phones. "By integrating farmer feedback from the outset, we will ensure that this technology is grounded in real-world needs and challenges.' The project also aims to reduce the environmental and financial burden of widespread preventive spraying. Dr Akpokodje added: 'Addressing the challenge of early diagnosis of potato plant disease would boost productivity and reduce costs for farmers, while supporting more sustainable and targeted disease management. "By decreasing reliance on pesticides, this approach benefits both the environment and the long-term resilience of the potato industry. The technology also has the potential for wider application across other crops, driving innovation in agricultural practices.' Dr Aiswarya Girija from the Institute of Biological, Environmental and Rural Sciences at Aberystwyth University said: Potatoes are the fourth most important staple crop globally, and optimal production is essential for a growing global population. Potato blight is therefore not just a farming issue — it's a food security issue. 'As well as threatening the stability of food supplies, potato blight drives up production costs and reliance on environmentally harmful fungicides. The system we plan to develop will be capable of detecting early signs of disease before they become visible to the human eye, allowing for timely and targeted interventions.' The first stage of the DeepDetect project is a comprehensive feasibility study, including market research to understand the limitations of current early warning systems. The project team will then create an AI-powered prototype using image datasets of healthy and diseased potato leaves. Once the prototype has been developed, the team will conduct focus groups and workshops with farmers and agronomists to refine the model and ensure usability. Read More The red tape that stalled farm loans — and the road back for Microfinance Ireland

Welsh Scientists to Develop AI App for Early Detection of Potato Blight
Welsh Scientists to Develop AI App for Early Detection of Potato Blight

Business News Wales

time5 days ago

  • Health
  • Business News Wales

Welsh Scientists to Develop AI App for Early Detection of Potato Blight

Potato blight, one of the world's most devastating crop diseases, could soon be detected using mobile phones thanks to a new app being developed by Welsh scientists. Spearheaded by a research team at Aberystwyth University, the DeepDetect project aims to develop a mobile phone app that uses artificial intelligence to provide early warnings of diseases in potatoes. Potato crops are highly susceptible to diseases caused by pathogens such as fungi, bacteria, viruses, and nematodes. Late blight, caused by Phytophthora infestans, can wipe out entire fields, and lead to enormous costs and food shortages. It is responsible for 20% of potato crop losses and £3.5 billion in economic losses worldwide. Traditionally, disease detection in crops has relied on manual inspection, a method that is time-consuming, expensive, and often subjective. DeepDetect aims to change that by harnessing the power of machine learning to deliver accurate diagnoses directly to farmers' smartphones. Dr Edore Akpokodje, a Lecturer in Computer Science at Aberystwyth University, said: 'Our goal is to empower farmers with a tool which is not only scientifically robust but also practical and easy to use, and which delivers instantaneous, location-specific disease forecasts straight to their phones. By integrating farmer feedback from the outset, we will ensure that this technology is grounded in real-world needs and challenges.' Potatoes are a vital crop globally and in Wales, where over 17,000 hectares are dedicated to potato farming. The project also aims to reduce the environmental and financial burden of widespread preventive spraying, which currently costs Welsh farmers up to £5.27 million annually. Dr Akpokodje added: 'Addressing the challenge of early diagnosis of potato plant disease would boost productivity and reduce costs for farmers, while supporting more sustainable and targeted disease management. By decreasing reliance on pesticides, this approach benefits both the environment and the long-term resilience of the potato industry. The technology also has the potential for wider application across other crops, driving innovation in agricultural practices.' Dr Aiswarya Girija from the Institute of Biological, Environmental and Rural Sciences at Aberystwyth University said: 'Potatoes are the fourth most important staple crop globally, and optimal production is essential for a growing global population. Potato blight is therefore not just a farming issue – it's a food security issue. 'As well as threatening the stability of food supplies, potato blight drives up production costs and reliance on environmentally harmful fungicides. The system we plan to develop will be capable of detecting early signs of disease before they become visible to the human eye, allowing for timely and targeted interventions.' The first stage of the DeepDetect project is a comprehensive feasibility study, including market research to understand the limitations of current early warning systems and identify the needs of Welsh farmers. This stage will begin with the project team speaking to stakeholders and members of the public on the Aberystwyth University stand at the Royal Welsh Show. The project team will then create an AI-powered prototype using image datasets of healthy and diseased potato leaves. Once the prototype has been developed, the team will conduct focus groups and workshops with farmers and agronomists to refine the model and ensure usability. The outcomes of this feasibility study, which is funded by the Welsh Government Smart Flexible Innovation Support (SFIS) programme, will lay the groundwork for a national Early Warning System for potato blight, with potential to expand the technology to other crops and regions in the future.

Thoughts From The Deepfakes Arms Race
Thoughts From The Deepfakes Arms Race

Forbes

time25-03-2025

  • Forbes

Thoughts From The Deepfakes Arms Race

It's now sort of common knowledge that we're headed into a new AI being able to create sophisticated fake content – images, videos, etc. This has huge ramifications for our world – from celebrities and politicians to normal people, everyone is going to be affected. We're already seeing these technologies being used by bad faith factors in mass media, and we're seeing young people creating fake nudes of each other in ways that are harmful. So what do you do? How do we push back against the harmful effects of a new threat? I wanted to highlight some of the ways that both deepfake technologies and defensive systems are getting better over time. That might help us think about how to tackle this phenomenon. The most sophisticated deepfake spotter tools can take a video and look for those subtle tells that show whether it's naturally produced or not. This IEEE piece goes over some of the forensic markers that can be used, and points out that many of these tools are ultimately effective. There's a human component, too, as in this piece where Louise Bruder is described as a 'super-recognizer' tasked with spotting deepfake content. Here's more from a team presenting in a recent TED talk around a particular tool called Deep Detect: Melat Ghebreselassie and Elon Raya are explaining the use of this technology and its benefit to the public. Raya points out that you need something that is live, in his words, 'on the go', easily accessible, and versatile. Deep Detect, he says, works in real time on platforms like YouTube, which is where we need this type of work to be done. On the other hand, former solutions lacked efficacy. 'They just crumbled,' he said of traditional tools, 'because they're trained in controlled environments.' New tools, he notes, are trained with messy data, so they are better at identifying deepfakes, in the wild, as it were. In describing these systems, Ghebreselassie and Raya go over that interplay between two effective AI engines. You could call it the 'generative adversarial network model,' which was a common way to describe this in the earlier days of machine learning, at the beginning of this decade. In this situation, a generative model is producing things: in this case, deepfakes. The adversarial model is assessing them, and telling if they're deepfakes or not. The traditional idea is that the result goes back to the generative model to tweak or fine-tune its results. However, if the result goes to a human audience instead, it works against the deepfaker. In other words, this can be used in both positive and negative ways with deepfakes. The adversarial engine can be detecting the deepfakes and pointing them out to the public, or it can be training the generative network to make even better deepfake content. However, presumably, there's a limit to what deepfakes can accomplish. They may not be able to really mimic all of these small nuances of naturally produced content. For example, one way that the deepfake spotters work is to look at lighting and natural composition. In order to fool these tools, the deepfake generator would have to create all of the dynamics of natural lighting, down to the very last detail. The extent to which new models can do that is sort of unknown. Then there is human involvement, as in the BBC piece that I mentioned. People are the gatekeepers in some of these situations, and they can use the AI in assistive ways In terms of the technology that Raya and Ghebreselassie present, there's a sort of crowdsourcing model that Ghebreselassie calls a 'game-changer' for deepfake spotting. In decentralized finance, a crowd of people forms a consensus, and that's the trust mechanism for the economic outcome. You can do that with deepfake detection, too. If 90% of people report it as a potential deepfake, you can take that into account as algorithms determine what's likely to be fake content. 'If 80% of users agree on a piece of content, it's added for retraining and flagged for our model to learn from,' Ghebreselassie explains. 'And we're using replay-based learning that allows the model to learn without forgetting the past pieces of content it's seen.' 'We use regularization methods such as elastic weight modulation,' Raya adds, 'so that the model doesn't forget key features learned, while also fine-tuning on new data.' In addition, Ghebreselassie pointed out that the Deep Detect system has two 'superpowers': one is a multi-head attention mechanism, allowing it to focus on more than one thing at once. Another is the ability to normalize with NLP. The system uses convolutional neural networks to extract features, and a visual transformer to perform deep evaluations. So the news here is mixed. The good news is that the deepfake spotting tools are pretty elaborate and complex. They're pretty advanced. They use all of the above power to allow us to minimize the harm that deepfakes are causing. The bad news is that the deepfake generators are always evolving, too. Feel free to drop a comment below if you have a thought on how this is going to impact our society in the years to come.

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