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In Situ Cane Toad Recognition

机译:原位甘蔗蟾蜍识别

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摘要

Cane toads are invasive, toxic to native predators, compete with native insectivores, and have a devastating impact on Australian ecosystems, prompting the Australian government to list toads as a key threatening process under the Environment Protection and Biodiversity Conservation Act 1999. Mechanical cane toad traps could be made more native-fauna friendly if they could distinguish invasive cane toads from native species. Here we designed and trained a Convolution Neural Network (CNN) starting from the Xception CNN. The XToadGmp toad-recognition CNN we developed was trained end-to-end using heat-map Gaussian targets. After training, XToadGmp required minimum image pre/post-processing and when tested on 720×1280 shaped images, it achieved 97.1% classification accuracy on 1863 toad and 2892 not-toad test images, which were not used in training.
机译:甘蔗蟾蜍具有侵入性,对本土掠食者有毒,与本土食虫动物竞争,对澳大利亚的生态系统具有毁灭性影响,促使澳大利亚政府将蟾蜍列为《 1999年环境保护和生物多样性保护法》规定的主要威胁过程。如果它们可以将入侵性蟾蜍蟾蜍与本地物种区分开来,则可以使它们对本地动物友好。在这里,我们从Xception CNN开始设计和训练了卷积神经网络(CNN)。我们开发的XToadGmp蟾蜍识别CNN是使用热图高斯目标进行端到端训练的。训练后,XToadGmp需要最少的图像预处理/后处理,并且在720×1280形状的图像上进行测试时,它在未用于训练的1863蟾蜍和2892非蟾蜍测试图像上达到了97.1%的分类精度。

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