2010
DOI: 10.2202/1556-3758.1788
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Aspect Ratio Analysis Using Image Processing for Rice Grain Quality

Abstract: Determination of aspect ratio distribution is important for elongated, needle-shaped particles whose utility and/or value may depend on this feature. In this work rice grain is taken as an example of such a particle and its aspect ratio distribution in various samples is found using image processing. The samples examined were from three different grades (commonly termed as full, half and broken) sold in local market and priced according to their size. From the analysis, reference aspect ratios were assigned to… Show more

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Cited by 27 publications
(10 citation statements)
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“…To address this issue, the contributions of L * , a * , b * , h, C * , S L* , S a* , S b* , S h and S C* should be calculated. Table 4 presents the contribution values of L * , a * , b * , h, C * ,S L* , S a* , S b* , S h and S C* of the out-of-control packs of sausages (i. e. packs 1,2,3,8,17,24,28). For instance, ΔL * is the difference in lightness or darkness values.…”
Section: Implication Of Control Chart Signalsmentioning
confidence: 99%
See 1 more Smart Citation
“…To address this issue, the contributions of L * , a * , b * , h, C * , S L* , S a* , S b* , S h and S C* should be calculated. Table 4 presents the contribution values of L * , a * , b * , h, C * ,S L* , S a* , S b* , S h and S C* of the out-of-control packs of sausages (i. e. packs 1,2,3,8,17,24,28). For instance, ΔL * is the difference in lightness or darkness values.…”
Section: Implication Of Control Chart Signalsmentioning
confidence: 99%
“…In addition, Gökmen and Sügüt applied computer vision based approach for the measurement of color in a user defined polygonal area on the digital image of a food product [7]. Aggarwal and Mohan analyzed aspect ratio of rice grain quality using computer vision [8]. Girolami et al utilized image analysis with a computer vision system and then with a consumer test in evaluating the appearance of Lucanian dry sausages.…”
Section: Introductionmentioning
confidence: 99%
“…The rice kernels were classified into short, long, slender, round and bold grades using a support vector machine classifier using variations in length, width and its ratio of individual seeds as the classification criteria. Based on relative differences in kernel sizes, the proposed technique could also differentiate head rice from brokens and brewers 8 . In another study, the visual grading of soybean was described using image analysis techniques taking size uniformity as the classification criteria 9 .…”
Section: Introductionmentioning
confidence: 99%
“…Looking into the broader domain, there is a large amount of research into measuring the quality of other crops. Firstly, the grades of product are determined by calculating rice kernel shape and size features and training a support vector machine [7,8]. Additionally, in [9] rice colour features and Fourier descriptors for shape and size are extracted from which the quality grade is determined through multivariate statistical analysis.…”
Section: Introductionmentioning
confidence: 99%