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A shadow detection and removal method for fruit recognition in natural environments

机译:自然环境中果实识别的影子检测与去除方法

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摘要

Effective shadow detection and shadow removal can improve the performance of fruit recognition in natural environments and provide technical support for agricultural intelligence. In this study, a superpixel segmentation method was used to divide an image into multiple small regions. Based on the superpixel segmentation results, the shadow regions and the shadowless regions of the orchard images under natural light were compared and studied. Seven shadow saliency features (SSF) were explored and analyzed for shadow detection. The SSF were used to enhance the shadow characteristics. Then, the genetic algorithm (GA) was used to optimize the parameters, and support vector machine recursive feature elimination (SVM-RFE) was used to determine the best feature combination for shadow detection. According to the best feature combination, the support vector machine (SVM) algorithm was used to determine whether each segment of the superpixel segmentation results belonged to the shadow region. Shadow removal was carried out on each detected shadow region, and a natural light image after shadow removal was obtained. Finally, the accuracy of shadow detection was tested. The experimental results showed that the average accuracy of the shadow detection algorithm in this study was 91.91%. As a result, the precision and recall for fruits recognition after shadow removal generally improved.
机译:有效的阴影检测和阴影去除可以提高自然环境中果识别的性能,为农业智能提供技术支持。在该研究中,使用超像素分割方法将图像划分为多个小区域。基于Superpixel分割结果,比较了天然光下的云彩图像的影子区域和果园图像的无阴影区域。探索七个阴影显着性功能(SSF)并分析阴影检测。 SSF用于增强阴影特征。然后,使用遗传算法(GA)来优化参数,并且支持向量机递归特征消除(SVM-RFE)用于确定阴影检测的最佳特征组合。根据最佳特征组合,支持向量机(SVM)算法用于确定SuperPixel分段结果的每个段是否属于阴影区域。在每个检测到的阴影区域上进行阴影去除,并获得暗影去除后的自然光图像。最后,测试了阴影检测的准确性。实验结果表明,该研究中阴影检测算法的平均精度为91.91%。结果,暗影移除后的水果识别的精度和召回通常改善。

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