基于暹罗网络的蛇图像分类

C. Abeysinghe, A. Welivita, I. Perera
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引用次数: 13

摘要

对于适合小数据集的深度学习模型的研究还处于不成熟的状态,因为它受到机器学习社区的关注较少。使用图像识别蛇的种类是一个分类问题,具有许多医学、教育和安全相关的重要性,但没有大型数据集。由于缺乏大型数据集和收集这些数据集的难度,没有人应用深度学习算法来解决这个问题。在本文中,我们探索了单镜头学习技术与深度神经网络在解决蛇图像分类问题中的适用性。通过使用卷积架构,我们能够获得强大的结果,并与人类的结果进行了比较分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Snake Image Classification using Siamese Networks
Research into deep learning models suitable for small data sets is still in an immature state since it has received less attention from the machine learning community. Identifying a snake species using images, is a classification problem which has a number of medical, educational and safety-related importance but no large data set. Due to the lack of large data sets and difficulty in collecting such data set, no one has applied deep learning algorithms, to solve this problem. In this paper, we explored the applicability of single shot learning techniques along with deep neural networks to solve the snake image classification problem. By using a convolutional architecture, we were able to achieve strong results and did a comparative analysis with human results.
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