Understanding the growth and distribution of the prawns is critical for optimising the feed and harvest strategies. An inadequate understanding of prawn growth can lead to reduced financial gain, for example, crops are harvested too early. The key to maintaining a good understanding of prawn growth is frequent sampling. However, the most commonly adopted sampling practice, the cast net approach, is unable to sample the prawns at a high frequency as it is expensive and laborious. An alternative approach is to sample prawns from feed trays that farm workers inspect each day. This will allow growth data collection at a high frequency (each day). But measuring prawns manually each day is a laborious task. In this article, we propose a new approach that utilises smart glasses, depth camera, computer vision and machine learning to detect prawn distribution and growth from feed trays. A smart headset was built to allow farmers to collect prawn data while performing daily feed tray checks. A computer vision + machine learning pipeline was developed and demonstrated to detect the growth trends of prawns in 4 prawn ponds over a growing season.
翻译:了解虾的生长和分布对于优化饲料和收获战略至关重要。对虾生长的理解不足可能导致财政收益减少,例如,作物收获太早。保持对虾生长的正确了解的关键在于频繁抽样。然而,最常用的抽样做法,即铸网方法,由于价格昂贵和艰苦,无法对虾进行高频率取样。另一种办法是从农场工人每天检查的饲料盘中抽取虾。这将允许在高频(每天)收集生长数据。但每天手工测量虾是一件艰巨的任务。在本篇文章中,我们提出了使用智能眼镜、深度相机、计算机视觉和机器学习的新办法,以探测虾的分布和饲料盘的生长。制作了一个智能耳机,以便农民在进行日常饲料托盘检查时收集虾数据。开发了一个计算机视觉+机器学习管道,并演示了在不断增长的季节里在4个虾池中检测虾生长趋势。