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Decision Tree Ensemble Vs. N.N. Deep Learning: Efficiency Comparison For A Small Image Dataset

机译:决策树组合vs. N.N.深度学习:小图像数据集的效率比较

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This paper presents a study of the efficiency of machine learning algorithms applied on an image recognition task. The dataset is composed of aerial GeoTIFF images of 5 different vineyards taken with a drone. It presents the application of two different classification algorithms with an efficiency comparison over a small dataset. A Neural Network algorithm for classification through the TensorFlow platform will be explained first, and a Decision Tree Ensemble algorithm for classification through a machine learning platform will be explained second. This work shows that the accuracy of the Decision Tree Ensemble algorithm (94.27%) outperforms the accuracy of the Deep Learning algorithm (91.22%). This result is based on the final detection accuracy as well as on the computation time.
机译:本文提出了一种应用于图像识别任务的机器学习算法效率的研究。该数据集由无人机拍摄的5个不同葡萄园的GeoTIFF航空影像组成。它介绍了两种不同分类算法的应用,并在一个小型数据集上进行了效率比较。首先将说明通过TensorFlow平台进行分类的神经网络算法,然后将对通过机器学习平台进行分类的决策树集成算法进行说明。这项工作表明,决策树集成算法的准确性(94.27 \%)优于深度学习算法的准确性(91.22 \%)。该结果基于最终检测精度以及计算时间。

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