The performance of Machine Learning on Low Resolution Image Classifier

J. Ngernplubpla, Kulwarun Warunsin, O. Chitsobhuk
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Abstract

The ability of machine learning has become a very famous and important technique for discovering statistically significant patterns in the available data. In this paper, we presented the gradient profile spectral characteristics classification on vertical and horizontal gradient acceleration data, Edge Sketch Image and The Relational Gradient Direction data in low-resolution image input. Various training datasets were learned by CatBoost Classifier to created gradient profile priors. This technique was boosting schemes help to reduce over fitting and improves quality of the model. Due to symmetric tree structure of the CatBoost, it provided fast inference and accelerated the implementation. Several predictive and conventional classification techniques were chosen for performance comparison. The experimental results demonstrated performance improvement in classification of the frequency level area in various image characteristics.
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机器学习在低分辨率图像分类器上的性能
机器学习的能力已经成为在可用数据中发现统计显著模式的一种非常著名和重要的技术。本文提出了低分辨率图像输入中垂直和水平梯度加速度数据、边缘草图图像和相关梯度方向数据的梯度轮廓光谱特征分类方法。CatBoost分类器学习各种训练数据集来创建梯度轮廓先验。这种技术是促进方案有助于减少过度拟合和提高模型的质量。由于CatBoost的对称树结构,它提供了快速的推理,加快了实现速度。选择了几种预测和传统分类技术进行性能比较。实验结果表明,该方法在不同图像特征的频率水平区域分类方面有一定的提高。
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