Delineation approaches provide significant benefits to various domains, including agriculture, environmental and natural disasters monitoring. Most of the work in the literature utilize traditional segmentation methods that require a large amount of computational and storage resources. Deep learning has transformed computer vision and dramatically improved machine translation, though it requires massive dataset for training and significant resources for inference. More importantly, energy-efficient embedded vision hardware delivering real-time and robust performance is crucial in the aforementioned application. In this work, we propose a U-Net based tree delineation method, which is effectively trained using multi-spectral imagery but can then delineate single-spectrum images. The deep architecture that also performs localization, i.e., a class label corresponds to each pixel, has been successfully used to allow training with a small set of segmented images. The ground truth data were generated using traditional image denoising and segmentation approaches. To be able to execute the proposed DNN efficiently in embedded platforms designed for deep learning approaches, we employ traditional model compression and acceleration methods. Extensive evaluation studies using data collected from UAVs equipped with multi-spectral cameras demonstrate the effectiveness of the proposed methods in terms of delineation accuracy and execution efficiency.
翻译:深度学习改变了计算机视野,大大改进了机器翻译,尽管需要大量的培训和大量资源来进行推断。更重要的是,在上述应用中,提供实时和稳健绩效的节能嵌入式视觉硬件对于提供实时和稳健绩效至关重要。在这项工作中,我们建议采用基于U-Net的树型划界方法,该方法使用多光谱图像进行有效培训,然后可以绘制单一光谱图像。还进行本地化的深层结构,即与每个像素相对应的等级标签,已经成功地用于进行小规模的分解图像培训。地面真相数据是利用传统图像分解和分解方法生成的。为了能够在为深层学习方法设计的嵌入式平台中高效地执行拟议的DNN,我们采用了传统的模型压缩和加速方法。利用配备多光谱照相机的UAVs收集的数据进行广泛的评估研究,展示了拟议方法在精确度和执行效率方面的有效性。