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A Novel Flower Pollination Algorithm for Auto-Grading of Edible Birds Nest

机译:一种用于可食用鸟类巢的自动分级的新型花授粉算法

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Edible Bird Nest (EBN) produced by certain species of swiftlets has been known of its source of protein and vitamins that benefit the human body. This results in high demand from humanity due to the advantages of consuming the EBN. However, manual process of grading and classifying the EBN for different price range may cause drawbacks towards the production of EBN. The grading of EBN is done by observing the colour, shape, size and impurities present in the nest. Although manual process is done by trained personnel, the results obtained are often inconsistent and inaccurate due to human fatigue. Hence, this process is tedious and time consuming which may cause delay in the production of EBN. To overcome this issue, a novel Drunken Flower Pollination Algorithm (DFPA) is developed to perform auto grading on the EBN. This DFPA is also compared with the existing FPA and four other popular heuristics where the DFPA achieved better grading accuracy with an average accuracy of nearly 88%.
机译:由某些物种的SWIFES生产的可食用鸟巢(EBN)已知其蛋白质和维生素的来源,使人体受益。 由于消耗EBN的优点,这导致人类的高度需求。 然而,用于不同价格范围的评分和分类EBN的手动过程可能导致缺点朝向EBN的生产。 EBN的分级是通过观察巢中存在的颜色,形状,尺寸和杂质来完成的。 虽然手动过程由培训人员完成,但由于人类疲劳,所获得的结果往往不一致和不准确。 因此,该过程是繁琐且耗时的令人疑惑,可能导致eBN的生产延迟。 为了克服这个问题,开发了一种新型醉酒花授粉算法(DFPA)以在EBN上执行自动分级。 该DFPA也与现有的FPA和四个其他流行的启发式进行比较,其中DFPA实现了更好的分级精度,平均精度近88%。

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