基于计算机视觉的自动化平台

Burak Şahi̇n, Aytug Boyaci
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引用次数: 0

摘要

随着技术的发展和科学研究,数据生成的迅速增加导致了新的数据分析工具的发展,包括机器学习(ML)。机器学习是传统工程方法的一种替代方法,它不需要对问题的现场知识来获得解决方案。然而,机器学习算法可能很复杂,并且需要专业知识才能有效地使用它们。已经出现了各种各样的方法来回答这个问题。有许多领域和问题可以应用机器学习。我们的研究局限于计算机视觉和AutoML可以解决的问题。我们使用基于自动化和视觉的方法来实现分类、目标检测和分割任务的解决方案。我们的目标是开发一个无需专家干预的平台。用户加载数据集并选择他们想要的任务,而不需要接触任何东西,他们就可以训练他们的模型。训练结束后,他们可以用自己的硬件实时传输训练内容。
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Computer Vision Based AutoML Platform
The rapid increase in data generation with technological developments and scientific research has led to the development of new data analysis tools, including Machine Learning (ML). ML is an alternative to conventional engineering methods and it does not require field knowledge of the problem to obtain solutions. However, ML algorithms can be complex, and expert knowledge is required to use them effectively. Various methods have emerged to answer this problem. There are many areas and problems where machine learning can be applied. We have limited our research to the problems that can be solved by Computer Vision and AutoML. We use the AutoML and Vision based approach to achieve a solution for Classification, Object Detection and Segmentation tasks. Our aim was the develop a platform that works without expert intervention. Users loads the dataset and choose the tasks that they want and without touching anything they can train their model. When trainning has done, they can stream it in real time with their own hardware.
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