迈向成年斑马鱼的自动监测

Q. Al-Jubouri, W. Al-Nuaimy, Hamzah S. AlZu'bi, O. Zahran, Jonathan Buckley
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引用次数: 3

摘要

在过去的二十年中,斑马鱼(Danio rerio)已经成为一种有效的模型,可以帮助研究广泛的人类疾病,以及环境建模和药物发现等多种应用。从经济上讲,这种鱼数量多、价格低、养护要求低,鼓励将其用于研究。除此之外,对斑马鱼的研究正被用于提高对鱼类生理学的理解,对鱼类福利有影响。为了彻底模拟这些鱼的行为、发育和生长,重要的是能够仔细检查单个鱼对一系列刺激的反应特征,为此,使用视频数据进行离线鱼类识别和在线跟踪。跟踪和识别这些小而快速移动的物体是一个挑战,本文试图使用行为分析方法来解决这个问题。该系统利用单个高分辨率摄像机和两个低成本的同步摄像机,捕捉每条孤立的鱼游过给定标记时的正面(脸部)和侧面(侧面)照片。获取的图像然后受到三个单独的处理路线,以满足三个互补但不同的目标。首先,提取鱼的面部和轮廓特征,以帮助识别单个鱼。然后,对于每一条被识别的鱼,行为特征,如鱼盖的频率和强度,心跳频率或呼吸周期被量化,以评估鱼的福利方面。此外,每条鱼的体积是根据其外形尺寸估算的,从而可以在整个生命周期内监测鱼的重量。本文介绍了这个正在进行的研究项目的初步实验考虑和发现。迄今为止的结果既令人鼓舞又充满希望,验证了所采用的方法和实验配置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards automated monitoring of adult zebrafish
Over the last two decades, zebrafish (Danio rerio) have emerged as an efficient model to aid in the research of a broad range of human diseases as well as such diverse applications as environmental modelling and drug discovery. Economically, the large number, low price and low maintenance requirements of this fish species encouraged its use for research. In addition to this, the study of zebrafish is being used to improve the understanding of fish physiology, with implications for fish welfare. In order to thoroughly model the behaviour, development and growth of these fish, it is important to be able to scrutinise the characteristics of individual fish as they respond to a range of stimuli, and to this end off-line fish recognition and on-line tracking using video data is employed. Tracking and identifying such small and fast-moving objects is a challenge, and this paper seeks to address this using a behavioural analysis approach. Utilising single high resolution camera and two low-cost synchronised video cameras, the proposed systems captures front (face) and side (profile) pictures of each isolated fish as they swim past a given marker. The acquired images are then subject to three separate processing routes in order to satisfy three complementary but distinct objectives. Initially, fish face and profile features are extracted to aid the identification of individual fish. Then, for each fish identified, behavioural features such as the frequency and intensity of the operculum beat rate or breathing cycle are quantified in order to assess aspects of the fish welfare. Additionally, the volume of each fish is estimated based on its profile dimensions, enabling the weight of the fish to be monitored throughout its lifetime. This paper presents preliminary experimental considerations and findings of this on-going research project. Results to date have been both encouraging and promising, validating the approach and the experimental configuration adopted.
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