基于作物图像证据理论的非认知颜色和纹理图像分割融合

Masoom Jain, Mohammed G. Vayada
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引用次数: 3

摘要

目前的图像处理场景正在向感知化方向发展。本文提出了一种基于非认知的低层次颜色和纹理特征的感知分割方法,并将其直接应用于图像裁剪。当有人为干预时,保证了更高的效率。本文主要针对信息频率较高的图像进行基于颜色纹理的图像分割。本文旨在对各种作物图像进行高效鲁棒的图像分割,并在低层次颜色特征和高层次语义纹理特征之间进行一些调整,以提高分割效率。随着性能的显著提高,可以使用感知调优。本文还非常明确地强调了正常图像分割与感知图像分割的主要区别。未来的工作可以扩展到非认知方法,如证据理论,数据可以融合,使算法鲁棒性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-cognitive color and texture based image segmentation amalgamation with evidence theory of crop images
The present scenario of image processing is approaching towards the perceptualization. This paper proposes perceptual segmentation with non cognitive low level color and texture features and the application is directly to crop images. Higher efficiency is guaranteed when human intervention is involved. This paper basically takes care of color texture based image segmentation specifically for the images in which the information frequencies are higher. Paper aims to present efficient and robust image segmentation of various crop images and providing some tuning between the low level color and texture feature with high level semantics to improve efficiency of segmentation. With the significant performance improvement a perceptual tuning can be used. Major difference between the normal image segmentation and perceptual image segmentation is also emphasis very clearly in this paper. The future work can be extended by involving non cognitive methodology such as evidence theory, data can be amalgam to make algorithm robust and efficient.
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