首页> 外文期刊>Laser Physics: An International Journal devoted to Theoretical and Experimental Laser Research and Application >Biospeckle image processing algorithms for non-destructive differentiation between maturity and ripe stages of Indian climacteric fruits and evaluation of their ripening period
【24h】

Biospeckle image processing algorithms for non-destructive differentiation between maturity and ripe stages of Indian climacteric fruits and evaluation of their ripening period

机译:用于成熟和成熟阶段的非破坏性差异的生物思想图像处理算法,以及印度中小型的成熟阶段和它们成熟时期的评价

获取原文
获取原文并翻译 | 示例
           

摘要

The proposed work deals with biospeckle image processing for non-destructive differentiation between maturity and ripe stages along with a ripening period evaluation of three Indian climacteric fruits (namely mango, guava and banana). We use existing algorithms such as histograms, RGB and HSB colour space, autocovariance, inertia moment (IM), absolute value difference, granulometric size distribution, gray level co-occurrence matrix and three new proposed algorithms, namely parameterized geometric mean of generalized difference (GD), image sequencing mean of parameterized GD, and squared temporal difference (STD). Histogram plots and spectral maps have been used for qualitative analysis whereas RGB and HSB values, speckle grain size plots, mean activity plots, GSD plots and textural features have been used for quantitative analysis. The experimental results reveal that IM is the best among the existing algorithms for differentiation between the maturity and ripe stages of the fruits quantitatively with the highest biospeckle activity (BA) difference, and STD is the best among the proposed algorithms for finding the qualitative as well as the quantitative difference and evaluation of ripening periods of the fruits. The average ripening periods of the three fruits were found to be approximately 86.86 +/- 3.00 h, 73.93 +/- 4.16 h, and 58.47 +/- 2.23 h, respectively. It is further concluded that both the BA difference and one of the textural feature variations between the maturity and ripe stage are highest for the banana using IM (1562.32) and contrast variation (73.72), respectively.
机译:拟议的工作涉及用于成熟和成熟阶段的非破坏性差异的生物划分,以及三个印度中小型水果(即芒果,番石榴和香蕉)的成熟时期评估。我们使用现有算法,如直方图,RGB和HSB颜色空间,自电转主义,惯性力矩(IM),绝对值差,粒度尺寸分布,灰度级共发生矩阵和三个新的提出算法,即广义差异的参数化几何平均值( GD),参数化GD的图像测序均值,并平方时间差(STD)。直方图绘图和光谱图已被用于定性分析,而RGB和HSB值,散斑粒度图,平均活动图,GSD图和纹理特征已被用于定量分析。实验结果表明,IM是现有算法中的成熟度和成熟阶段的差异算法,定量与最高的生物学活动(BA)差异,并且STD是所提出的算法中最好的算法作为水果成熟时期的定量差异和评价。发现三种果实的平均成熟时期分别为约86.86 +/- 3.00h,73.93 +/- 4.16 h,分别为58.47 +/- 2.23h。进一步得出结论,使用IM(1562.32)和对比度变化(73.72),香蕉之间的BA差和成熟阶段之间的纹理特征变化之一。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号