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Using Deep Convolutional Networks for Species Identification of Xylotheque Samples

机译:使用深度卷积网络对木糖体样品进行物种鉴定

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Forest species identification is critical to scientifically support many environmental, commercial, forensic, archaeological, and paleontological actividades. Therefore, it is very important to develop fast and accurate identification systems. We present a deep CNN for automated forest species identification based on macroscopic images of wood cuts. We first implement and study a modified version of the LeNet convolutional network, which is trained from scratch with a database of macroscopic images of 41 forest species of the Brazilian flora. With this network we achieve a top-1 accuracy of 93.6%. Additionally, we fine-tune the Resnet50 model with pre-trained weights on Imagenet to reach a top-1 accuracy of 98.03%, which improves previous published results of research on the same image database.
机译:森林物种识别对于科学地支持许多环境,商业,法医,考古和古生物学活动至关重要。因此,开发快速,准确的识别系统非常重要。我们提出了一种基于木材切割的宏观图像的,用于森林物种自动识别的深层CNN。我们首先实现并研究LeNet卷积网络的修改版本,该网络从头开始使用巴西植物区系41种森林物种的宏观图像数据库进行训练。借助该网络,我们可以达到93.6%的top-1准确性。此外,我们使用Imagenet上的预训练权重对Resnet50模型进行了微调,以达到98.03%的top-1准确性,从而改善了以前在同一图像数据库上发表的研究结果。

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