论文标题
牡蛎:使用模拟增强的牡蛎检测
OysterNet: Enhanced Oyster Detection Using Simulation
论文作者
论文摘要
牡蛎在海湾生活生态系统中起着关键作用,被认为是海洋的生物过滤器。近年来,牡蛎礁经过商业过度收获造成的重大破坏,需要保存以维持生态平衡。这种保存的基础是估计需要准确的牡蛎检测的牡蛎密度。但是,用于准确的牡蛎检测系统需要大量数据集获得,这是水下环境中一项昂贵且劳动密集型的任务。为此,我们提出了一种新颖的方法,可以在模拟中对牡蛎进行建模并渲染牡蛎的图像,以使用最小的真实数据来提高检测性能。与仅在牡蛎网络中仅使用真实数据相比,我们利用我们的合成数据以及用于牡蛎检测的实际数据可提高性能高达35.1%。我们还将最先进的工作提高了12.7%。这表明,使用对象的基本几何属性可以成功地增强有限数据集上的识别任务准确性,我们希望更多的研究人员对难以实现的数据集采用这种策略。
Oysters play a pivotal role in the bay living ecosystem and are considered the living filters for the ocean. In recent years, oyster reefs have undergone major devastation caused by commercial over-harvesting, requiring preservation to maintain ecological balance. The foundation of this preservation is to estimate the oyster density which requires accurate oyster detection. However, systems for accurate oyster detection require large datasets obtaining which is an expensive and labor-intensive task in underwater environments. To this end, we present a novel method to mathematically model oysters and render images of oysters in simulation to boost the detection performance with minimal real data. Utilizing our synthetic data along with real data for oyster detection, we obtain up to 35.1% boost in performance as compared to using only real data with our OysterNet network. We also improve the state-of-the-art by 12.7%. This shows that using underlying geometrical properties of objects can help to enhance recognition task accuracy on limited datasets successfully and we hope more researchers adopt such a strategy for hard-to-obtain datasets.