ΑΙhub 2024年12月19日
Interview with Andrews Ata Kangah: Localising illegal mining sites using machine learning and geospatial data
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Andrews Ata Kangah致力于利用AI解决环境问题,尤其关注加纳的非法采矿问题。他在Armtos和minoHealth AI Labs工作,通过机器学习和地理空间数据分析,开发了VitSegh24模型,可以识别非法采矿地点。该模型能实时监测采矿活动,帮助政府更有效地采取行动。他还积极参与AI社区,与全球研究人员合作,共同应对气候挑战。他的工作不仅展示了AI在环境领域的潜力,也体现了他对家乡环境的责任感。

🌍 Andrews Ata Kangah在Armtos致力于解决加纳的非法采矿问题,该问题严重破坏了当地的土地和水源。

⛏️ 他开发的VitSegh24模型利用地理空间数据和机器学习,能够识别并定位非法采矿区域,为政府提供实时监测信息。

🤝 在Deep Learning Indaba会议上,他不仅展示了自己的研究成果,还与采矿工程师和气候研究人员建立了合作关系,共同改进模型性能。

💡 他最初对AI并不感兴趣,但通过参与AI项目并不断实践,逐渐对AI产生了浓厚的兴趣,并将其应用于解决环境问题。

Andrews Ata Kangah is a team leader and researcher working on democratizing AI and AI solutions for environmental problems. We spoke to him about his research, attending the AfriClimate AI workshop at the Deep Learning Indaba, and what inspired him to work in AI and on climate-related projects.

Could you start by telling us a bit about yourself – where are you working, and what’s your area of research?

My name is Andrews Ata Kangah. I’m currently working as a team leader at minoHealth AI Labs. I also double as a researcher at Armtos, which is a non-profit. At Armtos, our current goal is to build a solution to solve the illegal mining problem that’s going on in Ghana. The mining is destroying the lands that are within mining areas.

At minoHealth AI Labs, which is a health company, we are focused on democratizing AI, making it accessible to everybody. We want to make healthcare accessible to people in rural areas. We recently launched a product (Moremi AI) to the public that helps with analysing medical images and then provides AI diagnostics results.

You won an award at the Deep Learning Indaba workshop AfriClimate AI workshop. Could you tell us about the work that you won the award for?

In September, I travelled to Senegal to participate in the Deep Learning Indaba. I presented a paper on our model VitSegh24. I also presented at the AfriClimate AI workshop – this was a five-minute talk about how we can use AI to help stop illegal mining in Ghana. That was the work (“Combating Climate Change Due to Galamsey: Geospatial Image Data Classifier for Localising Illegal Mining Sites”) that won the award at the AfriClimate AI workshop.

The project was related to the work I do at Armtos on illegal mining. At the moment, a lot of people in Ghana are angry at the government because this illegal mining has been going on for a long time, almost ten years now. The land and the rivers have been badly affected. Due to the mining, river bodies close to the mining sites can no longer serve as drinking water to nearby communities. I came up with the idea that we could use geospatial data and train a machine learning model that is able to segment out sections of the land where mining is going on. We can take the geospatial data and focus on the areas of concern, and the model segments out exactly where the mining is. We can stitch those images back together on a globe and see images of where the mining is actually taking place.

What the government used to do was find out where the illegal sites were by talking to people, then they’d go and try to seize the equipment. However, often, by the time they got to a site the miners had run away. It was taking them too long to find out where the new sites were. Our goal is to build a real-time system. If we can get images every few weeks or months, we can detect new mines, and the government can use this information to target the area. We now have a bird’s-eye view of new mines, and that is the first step in this project.

Did you meet anyone at the Deep Learning Indaba workshop who was working in a similar area that you could collaborate with?

Yes, I actually met a team of mining engineers! The company they work for is called Eramet. They came round to my stand at the conference and were really happy because they had been looking out for someone who was doing this kind of research. They were interested to hear what I had been doing.

I also met other researchers working on similar problems. For example, many people are working on different climate problems. During my literature review, I was able to get the contact details of some researchers in Canada who are working on a similar mining project. We are now collaborating with them to improve the performance of our model. But at Indaba actually, I was able to join the AfriClimate AI community which gave me access to a rich set of climate researchers like Santiago Hincapie and John Bagiliko who I discuss my ideas with and consider as friends.

What inspired you to work in the field of AI and on environmental problems?

I would say that there wasn’t one particular moment that made me want to work in AI. In fact, when I was studying, I was at the same time working with Darlington Akogo, CEO of Minohealth AI Labs, and he tried to put me on a course to learn machine learning, but I wasn’t really interested.

However, I have been building AI products for a while now and I’ve really begun to appreciate it. It’s great fun to work on AI, especially the current themes of my research. I think it was the constant involvement in the field that gave me the passion for it.

In terms of illegal mining, I’ve always been interested in the environment and how we can protect it. When I finished school I participated in some organised “clean-ups” in Ghana during my work at Turntabl Ghana Ltd. But way before that time, Google had a developer challenge programme where students could build a team, think of an idea, and work on it. It was about that same period that the concerns on the devastations of illegal mining to our natural environment started coming up. That was when I had the idea to build something like this, but, at that time, I didn’t know much about AI, geospatial data, or imaging.

It wasn’t until recently that I actually built my first model myself. I’ve now been involved in the AI field for a long time and have a lot more experience with AI models, having deployed a number of pretrained models myself. The motivation to finally start tackling the illegal mining issue in particular came from the Deep Learning Indaba AfriClimate AI workshop, and trying to meet the deadline for inclusion of my research in the Weakly Supervised Computer Vision workshop at the conference. At first I was not going to make any serious contribution, but then there were several calls for participation from the conference hosts so I decided to get involved. It was then that I remembered this idea about illegal mining and decided to go for it.

About Andrews

Andrews (Ata) Kangah is a researcher at Armtos, a non-profit focused on implementing solutions for the UN SDG goals and environmental protection and sustainability. His research focuses on applying machine learning, specifically semantic segmentation to identifying and localizing mining-affected areas in Ghana. Ata also doubles as a Lead Software Engineer at MinoHealth AI Labs and KaraAgro AI Labs. He is also a DevSecOps engineer working remotely at tech11 GmbH, an insurance software company for the European market situated in Wuzburg Germany. He contributed in the past to The Startup and Better Programming on Medium as a content creator. He contributes his ideas and thoughts on Bluwr.com as THE JEDI. Ata was a mentor at the 2021 Google Africa Developers Scholarship Program as a cloud track instructor. In his early career, he worked as a Contingent Software Engineer at Morgan Stanley through Turntabl Ghana Ltd., where he contributed to the Central Tools team.

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AI 非法采矿 环境 机器学习 地理空间数据
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