Suppr超能文献

使用人工智能获取蜥蜴体温和识别蜥蜴。

Lizard Body Temperature Acquisition and Lizard Recognition Using Artificial Intelligence.

机构信息

Mechanical Engineering Department, University of Minho, 4800-058 Guimarães, Portugal.

LIACC, University of Maia, 4475-690 Maia, Portugal.

出版信息

Sensors (Basel). 2024 Jun 26;24(13):4135. doi: 10.3390/s24134135.

Abstract

The acquisition of the body temperature of animals kept in captivity in biology laboratories is crucial for several studies in the field of animal biology. Traditionally, the acquisition process was carried out manually, which does not guarantee much accuracy or consistency in the acquired data and was painful for the animal. The process was then switched to a semi-manual process using a thermal camera, but it still involved manually clicking on each part of the animal's body every 20 s of the video to obtain temperature values, making it a time-consuming, non-automatic, and difficult process. This project aims to automate this acquisition process through the automatic recognition of parts of a lizard's body, reading the temperature in these parts based on a video taken with two cameras simultaneously: an RGB camera and a thermal camera. The first camera detects the location of the lizard's various body parts using artificial intelligence techniques, and the second camera allows reading of the respective temperature of each part. Due to the lack of lizard datasets, either in the biology laboratory or online, a dataset had to be created from scratch, containing the identification of the lizard and six of its body parts. YOLOv5 was used to detect the lizard and its body parts in RGB images, achieving a precision of 90.00% and a recall of 98.80%. After initial calibration, the RGB and thermal camera images are properly localised, making it possible to know the lizard's position, even when the lizard is at the same temperature as its surrounding environment, through a coordinate conversion from the RGB image to the thermal image. The thermal image has a colour temperature scale with the respective maximum and minimum temperature values, which is used to read each pixel of the thermal image, thus allowing the correct temperature to be read in each part of the lizard.

摘要

在生物学实验室中,对圈养动物的体温进行获取,对于动物生物学领域的多项研究至关重要。传统上,该获取过程是手动进行的,这不能保证所获取数据的准确性或一致性,并且对动物来说很痛苦。然后,该过程切换到使用热像仪的半手动过程,但仍需要手动点击视频中每 20 秒动物身体的每一部分,以获取温度值,这是一个耗时、非自动且困难的过程。该项目旨在通过自动识别蜥蜴身体的各个部位,基于同时使用两个摄像机拍摄的视频读取这些部位的温度,从而实现该获取过程的自动化:一个 RGB 摄像机和一个热像仪。第一台摄像机使用人工智能技术检测蜥蜴的各个身体部位的位置,第二台摄像机允许读取每个部位的相应温度。由于缺乏生物学实验室或在线的蜥蜴数据集,因此必须从头开始创建一个数据集,其中包含蜥蜴及其六个身体部位的识别。使用 YOLOv5 检测 RGB 图像中的蜥蜴及其身体部位,精度达到 90.00%,召回率达到 98.80%。经过初步校准后,RGB 和热像仪图像被正确定位,使得即使蜥蜴与周围环境温度相同,也可以通过从 RGB 图像到热图像的坐标转换来知道蜥蜴的位置。热图像具有一个颜色温度刻度,其中包含各自的最大和最小温度值,用于读取热图像的每个像素,从而可以在蜥蜴的每个部位正确读取温度。

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