用于手势数字图像分类的集合迁移学习

Andi Muhammad Amil Siddik, Ainun Mawaddah Abdal, Armin Lawi, Edy Saputra Rusdi
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引用次数: 0

摘要

手势分类是图像处理和机器学习中一项具有挑战性的任务。稳健的学习算法对实现最佳性能至关重要。集合迁移学习是一种结合了集合学习和迁移学习的技术,是提高分类模型性能的一种有前途的方法。本研究探讨了在手势分类中使用集合迁移学习的问题。手语数字数据集包含十种不同的手写图像类型,用于评估三种架构的性能:它们分别是 ResNet-50、VGG-19 和集合迁移学习(ResNet-50 和 VGG-19 的融合)。结果表明,三种架构都表现出色,但集合迁移学习的表现最好,准确率为 96.12%,精确率为 96.06%,召回率为 96.21%,F1 分数为 96.07%。这表明集合迁移学习能有效提高图像手势分类模型的性能。研究还发现,与单个模型相比,在集合迁移学习中结合 ResNet-50 和 VGG-19 能获得更优的结果。这是因为集合迁移学习可以利用两个模型的优势来提高整体性能。这项研究的结果凸显了采用集合迁移学习技术提高手势图像分类准确性和可靠性的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Transfer Learning for Hand-sign Digit Image Classification
Hand sign classification is a challenging task in image processing and machine learning. Robust learning algorithms are essential to achieve optimal performance. Ensemble transfer learning, a technique that combines ensemble learning and transfer learning, is a promising approach to improve classification model performance. This study investigates the use of ensemble transfer learning for hand sign classification. The Sign Language Digits Dataset, which contains ten distinct handwritten image types, was used to evaluate the performance of three architectures: ResNet-50, VGG-19, and Ensemble Transfer Learning (a fusion of ResNet-50 and VGG-19). The results showed that all three architectures performed well, but Ensemble Transfer Learning achieved the best performance with an accuracy of 96.12%, precision of 96.06%, recall of 96.21%, and F1 score of 96.07%. This suggests that ensemble transfer learning can effectively enhance model performance in image hand sign classification. The study also found that combining ResNet-50 and VGG-19 in Ensemble Transfer Learning yielded superior results compared to individual models. This is because ensemble transfer learning can leverage the strengths of both models to improve the overall performance. The findings of this study highlight the significance of employing ensemble transfer learning techniques to enhance accuracy and reliability in hand sign image classification.
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