Binary Adjacent Set Occurrence for a Simple Texture Analysis in Binary Image

Victor Phoa, Hariyono Rakhmad, A. Purwadi
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Abstract

Texture analysis is one of the common methods that can be used in image classification or automated identification tasks. With the rising of IoT and microcontroller based devices which come with limited computational capabilities, choosing a simple but efficient and effective image analysis method is one of the prominent key factors in the implementation. This paper provides an alternative of simple texture analysis descriptor using binary-adjacent statistical approach. The descriptor intended to approximate coarseness or spatial distribution in the binary image using the scale-invariant feature. By scaling, it gives benefits in analyzing samples with different dimension or aspect as long as it comes from a similar region ratio. The aim is to reduce analysis complexity and memory requirement while maintaining its usability and portability. In the similarity and discrimination test, it is still able to represent better result at low scale-level compared to frequency filters of the Fourier transform method.
二值图像中简单纹理分析的二值相邻集出现
纹理分析是图像分类或自动识别任务中常用的方法之一。随着物联网和基于微控制器的设备的兴起,这些设备的计算能力有限,选择一种简单而高效的图像分析方法是实现图像分析的关键因素之一。本文提出了一种使用二值相邻统计方法的简单纹理分析描述符的替代方法。描述符旨在利用尺度不变特征来近似二值图像中的粗糙度或空间分布。通过缩放,只要来自相似的区域比例,就可以对不同维度或不同方向的样本进行分析。其目的是在保持可用性和可移植性的同时减少分析的复杂性和内存需求。在相似度和区分度测试中,与傅立叶变换方法的频率滤波器相比,在低尺度水平上仍然能够表现出更好的结果。
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