Deep Learning: A Detailed Analysis Of Various Image Augmentation Techniques

S. Swathi, M. Rajalakshmi, Vijayalakshmi Senniappan
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引用次数: 1

Abstract

Deep learning has been performing reasonably well in computer vision tasks that call for a high volume of photos, although gathering images is often expensive and challenging. Different picture augmentation techniques have been put forth as practical and efficient solutions to this problem Understanding current algorithms is critical when developing new processes or determining the best approaches for a certain task. With deep learning, some of the data pre-processing that is typically required for machine learning is avoided. Unstructured text and visual data can be handled by these algorithms, which can also automate feature extraction and lessen the need for human experts. With a brand-new taxonomy of usable data, we undertake a complete survey of picture augmentation for deep learning in this work. We discuss the difficulties in computer vision tasks and vicinity distribution to give you a fundamental understanding of why we want picture augmentation. Based on the study, we think that our survey provides a clearer knowledge that may be used to select the best techniques or create original algorithms for real-world uses.
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深度学习:各种图像增强技术的详细分析
深度学习在需要大量照片的计算机视觉任务中表现得相当好,尽管收集图像通常既昂贵又具有挑战性。不同的图像增强技术已经被提出作为这个问题的实用和有效的解决方案,在开发新流程或确定特定任务的最佳方法时,了解当前的算法是至关重要的。通过深度学习,可以避免机器学习通常需要的一些数据预处理。这些算法可以处理非结构化文本和视觉数据,还可以自动提取特征,减少对人类专家的需求。利用一种全新的可用数据分类,我们在这项工作中对深度学习的图像增强进行了全面的调查。我们将讨论计算机视觉任务和邻近分布中的困难,以使您对我们为什么需要图像增强有一个基本的了解。基于这项研究,我们认为我们的调查提供了更清晰的知识,可用于选择最佳技术或创建用于现实世界的原始算法。
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