人工智能目前能够识别野生牡蛎吗?人类注释者与人工智能模型ODYSSEE的比较。

IF 3 Q2 ROBOTICS
Frontiers in Robotics and AI Pub Date : 2025-06-06 eCollection Date: 2025-01-01 DOI:10.3389/frobt.2025.1587033
Brendan Campbell, Alan Williams, Kleio Baxevani, Alyssa Campbell, Rushabh Dhoke, Rileigh E Hudock, Xiaomin Lin, Vivek Mange, Bernhard Neuberger, Arjun Suresh, Alhim Vera, Arthur Trembanis, Herbert G Tanner, Edward Hale
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引用次数: 0

摘要

牡蛎是生态和商业上重要的物种,需要经常监测以跟踪人口统计(例如,丰度,生长,死亡率)。目前监测牡蛎礁的方法通常需要破坏性的采样方法和大量的人工努力。然而,这些方法是破坏性的,对于小规模或敏感的环境是次优的。最近开发了一种替代方案,即奥德修斯模型,该模型使用深度学习技术,通过在牡蛎礁现场拍摄的视频或图像来识别活牡蛎,以评估其丰度。该模型在识别珊瑚礁上活牡蛎的有效性与专家和非专家注释者进行了比较。此外,我们还确定了预测误差的潜在来源。尽管该模型的推断速度明显快于专家和非专家注释者(分别为39.6 s, 2.34±0.61 h, 4.50±1.46 h),但该模型对活牡蛎数量的预测过高,在识别活牡蛎方面的准确率(63%)低于专家(74%)和非专家(75%)。图像质量是决定模型和注释器准确性的重要因素。更高质量的图像提高了人类的准确性,但降低了模型的准确性。尽管ODYSSEE还不够准确,但我们预计未来在更高质量的图像上进行训练,利用更多的实时图像,并结合额外的注释训练课程,将极大地提高基于此分析结果的模型预测能力。未来的研究应该着眼于提高活牡蛎和死牡蛎的检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Is AI currently capable of identifying wild oysters? A comparison of human annotators against the AI model, ODYSSEE.

Is AI currently capable of identifying wild oysters? A comparison of human annotators against the AI model, ODYSSEE.

Is AI currently capable of identifying wild oysters? A comparison of human annotators against the AI model, ODYSSEE.

Is AI currently capable of identifying wild oysters? A comparison of human annotators against the AI model, ODYSSEE.

Oysters are ecologically and commercially important species that require frequent monitoring to track population demographics (e.g., abundance, growth, mortality). Current methods of monitoring oyster reefs often require destructive sampling methods and extensive manual effort. However, these methods are destructive and are suboptimal for small-scale or sensitive environments. A recent alternative, the ODYSSEE model, was developed to use deep learning techniques to identify live oysters using video or images taken in the field of oyster reefs to assess abundance. The validity of this model in identifying live oysters on a reef was compared to expert and non-expert annotators. In addition, we identified potential sources of prediction error. Although the model can make inferences significantly faster than expert and non-expert annotators (39.6 s, 2.34 ± 0.61 h, 4.50 ± 1.46 h, respectively), the model overpredicted the number of live oysters, achieving lower accuracy (63%) in identifying live oysters compared to experts (74%) and non-experts (75%) alike. Image quality was an important factor in determining the accuracy of the model and annotator. Better quality images improved human accuracy and worsened model accuracy. Although ODYSSEE was not sufficiently accurate, we anticipate that future training on higher-quality images, utilizing additional live imagery, and incorporating additional annotation training classes will greatly improve the model's predictive power based on the results of this analysis. Future research should address methods that improve the detection of living vs dead oysters.

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来源期刊
CiteScore
6.50
自引率
5.90%
发文量
355
审稿时长
14 weeks
期刊介绍: Frontiers in Robotics and AI publishes rigorously peer-reviewed research covering all theory and applications of robotics, technology, and artificial intelligence, from biomedical to space robotics.
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