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Semantic Segmentation Of Endangered Tree Species In Brazilian Savanna Using Deeplabv3+ Variants

机译:使用Deeplabv3 +变体对巴西热带稀树草原中的濒危树种进行语义分割

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Knowing the spatial distribution of endangered tree species in a forest ecosystem or forest remnants is a valuable information to support environmental conservation practices. The use of Unmanned Aerial Vehicles (UAVs) offers a suitable alternative for this task, providing very high-resolution images at low costs. In parallel, recent advances in the computer vision field have led to the development of effective deep learning techniques for end-to-end semantic image segmentation. In this scenario, the DeepLabv3+ is well established as the state-of-the-art deep learning method for semantic segmentation tasks. The present paper proposes and assesses the use of DeepLabv3+ for mapping the threatened Dipteryx alata Vogel tree, popularly also known as cumbaru. We also compare two backbone networks for feature extraction in the DeepLabv3+ architecture: the Xception and MobileNetv2. Experiments carried out on a dataset consisting of 225 UAV/RGB images of an urban area in Midwest Brazil demonstrated that DeepLabv3+ was able to achieve in mean overall accuracy and Fl-score above 90%, and IoU above 80%. The experimental analysis also pointed out that the MobileNetv2 backbone overcame its counterpart by a wide margin due to its comparatively simpler architecture in view of the available training data.
机译:了解森林生态系统或森林残留物中濒危树种的空间分布是支持环境保护实践的宝贵信息。无人飞行器(UAV)的使用为该任务提供了合适的替代方法,以低成本提供了非常高分辨率的图像。同时,计算机视觉领域的最新进展已导致用于端到端语义图像分割的有效深度学习技术的发展。在这种情况下,DeepLabv3 +已被很好地确立为用于语义分割任务的最新深度学习方法。本文提出并评估了DeepLabv3 +在映射受威胁的Dipteryx alata Vogel树(通常也称为cumbaru)时的用途。我们还比较了DeepLabv3 +架构中用于特征提取的两个骨干网络:Xception和MobileNetv2。在由巴西中西部城市地区的225张UAV / RGB图像组成的数据集上进行的实验表明,DeepLabv3 +能够实现平均总体准确度,F1得分高于90%,IoU高于80%。实验分析还指出,由于可用的培训数据,MobileNetv2骨干网的架构相对简单,因此大大克服了其骨干网。

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