MFLD-net: a lightweight deep learning network for fish morphometry using landmark detection

IF 1.7 4区 环境科学与生态学 Q3 ECOLOGY
Alzayat Saleh, David Jones, Dean Jerry, Mostafa Rahimi Azghadi
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引用次数: 0

Abstract

Monitoring the morphological traits of farmed fish is pivotal in understanding growth, estimating yield, artificial breeding, and population-based investigations. Currently, morphology measurements mostly happen manually and sometimes in conjunction with individual fish imaging, which is a time-consuming and expensive procedure. In addition, extracting useful information such as fish yield and detecting small variations due to growth or deformities, require extra offline processing of the manually collected images and data. Deep learning (DL) and specifically convolutional neural networks (CNNs) have previously demonstrated great promise in estimating fish features such as weight and length from images. However, their use for extracting fish morphological traits through detecting fish keypoints (landmarks) has not been fully explored. In this paper, we developed a novel DL architecture that we call Mobile Fish Landmark Detection network (MFLD-net). We show that MFLD-net can achieve keypoint detection accuracies on par or even better than some of the state-of-the-art CNNs on a fish image dataset. MFLD-net uses convolution operations based on Vision Transformers (i.e. patch embeddings, multi-layer perceptrons). We show that MFLD-net can achieve competitive or better results in low data regimes while being lightweight and therefore suitable for embedded and mobile devices. We also provide quantitative and qualitative results that demonstrate its generalisation capabilities. These features make MFLD-net suitable for future deployment in fish farms and fish harvesting plants.

Abstract Image

MFLD-net:一种使用地标检测的鱼类形态测量的轻量级深度学习网络
监测养殖鱼类的形态特征对于了解生长、估计产量、人工养殖和基于种群的调查至关重要。目前,形态测量大多是手动进行的,有时与个体鱼类成像结合进行,这是一个耗时且昂贵的过程。此外,提取有用的信息,如鱼类产量和检测由于生长或畸形引起的微小变化,需要对手动收集的图像和数据进行额外的离线处理。深度学习(DL),特别是卷积神经网络(CNNs),在从图像中估计鱼类特征(如重量和长度)方面表现出了巨大的前景。然而,它们通过检测鱼类关键点(地标)来提取鱼类形态特征的用途尚未得到充分探索。在本文中,我们开发了一种新的DL架构,称为移动鱼类地标检测网络(MFLD-net)。我们表明,在鱼类图像数据集上,MFLD网络可以实现与一些最先进的细胞神经网络相当甚至更好的关键点检测精度。MFLD网络使用基于视觉变换器的卷积运算(即补丁嵌入、多层感知器)。我们表明,MFLD网络可以在低数据状态下实现有竞争力或更好的结果,同时具有轻量级,因此适用于嵌入式和移动设备。我们还提供了定量和定性的结果,以证明其泛化能力。这些特性使MFLD网适合未来部署在养鱼场和鱼类捕捞厂。
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来源期刊
Aquatic Ecology
Aquatic Ecology 环境科学-海洋与淡水生物学
CiteScore
3.90
自引率
0.00%
发文量
68
审稿时长
3 months
期刊介绍: Aquatic Ecology publishes timely, peer-reviewed original papers relating to the ecology of fresh, brackish, estuarine and marine environments. Papers on fundamental and applied novel research in both the field and the laboratory, including descriptive or experimental studies, will be included in the journal. Preference will be given to studies that address timely and current topics and are integrative and critical in approach. We discourage papers that describe presence and abundance of aquatic biota in local habitats as well as papers that are pure systematic. The journal provides a forum for the aquatic ecologist - limnologist and oceanologist alike- to discuss ecological issues related to processes and structures at different integration levels from individuals to populations, to communities and entire ecosystems.
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