R-CNN Based Deep Learning Approach for Counting Animals in the Forest: A Survey

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Abstract

This review paper delves into the pivotal realm of animal classification using images obtained through diverse techniques in forest environments. A robust framework is introduced, employing Transfer Learning (TL) within a Convolutional Neural Network (CNN) and leveraging the power of the Region-based Convolutional Neural Network (R-CNN) model for the construction of an automated animal identification system. This innovative framework is adeptly applied to analyze and identify focal species within captured images, contributing to the advancement of wildlife monitoring technologies. The dataset under scrutiny comprises 6,203 camera trap images featuring 11 distinct species, including Wild pig, Barking deer, Chital, Elephant, Gaur, Hare, Jackal, Junglecat, Porcupine, Sambhar, and Sloth bear. The inclusion of this diverse set of species ensures the robustness and applicability of the proposed methodology across a broad spectrum of wildlife scenarios. The integration of Transfer Learning withinthe Region-based Convolutional Neural Network (R-CNN) emerges as a crucial element, showcasing outstanding performance in species classification.Notably, the proposed model achieves a remarkable accuracy rate of 96% on the test dataset after a mere 18 epochs, employing a batch size of 32. This breakthrough holds the potential to expedite research outcomes, foster the evolution of more efficient and dependable animal monitoring systems, and consequently, alleviate the time and effort invested by researchers.In line with ethical considerations, the authors maintain anonymity in theircontribution, focusing on the significant strides made in the classification andanalysis of camera trap images within the observed site. This paper positions itself as a noteworthy and impactful contribution to the broader field of wildlife research and technology
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基于 R-CNN 的森林动物计数深度学习方法:调查
这篇综述论文深入探讨了利用在森林环境中通过各种技术获取的图像进行动物分类的关键领域。文中介绍了一个强大的框架,它在卷积神经网络(CNN)中采用了迁移学习(TL)技术,并利用基于区域的卷积神经网络(R-CNN)模型的强大功能构建了一个自动动物识别系统。这一创新框架被巧妙地应用于分析和识别捕获图像中的重点物种,为野生动物监测技术的进步做出了贡献。所研究的数据集包含 6,203 张相机陷阱图像,其中有 11 个不同的物种,包括野猪、巴金鹿、奇塔尔、大象、羚牛、野兔、豺、丛林猫、豪猪、桑巴尔和懒熊。这些物种的多样性确保了所提出方法的稳健性和在各种野生动物场景中的适用性。迁移学习与基于区域的卷积神经网络(R-CNN)的整合是一个关键因素,在物种分类方面表现出色。值得注意的是,所提出的模型在测试数据集上只用了 18 个历元,就达到了 96% 的显著准确率,批量大小为 32。这一突破有望加快研究成果的取得,促进更高效、更可靠的动物监测系统的发展,从而减轻研究人员投入的时间和精力。出于伦理考虑,作者在投稿中保持匿名,重点关注观察地点内相机陷阱图像分类和分析方面取得的重大进展。本文的定位是为更广泛的野生动物研究和技术领域做出值得关注和有影响力的贡献。
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