版权所有:内蒙古大学图书馆 技术提供:维普资讯• 智图
内蒙古自治区呼和浩特市赛罕区大学西街235号 邮编: 010021
作者机构:Natl Taipei Univ Nursing & Hlth Sci Res Ctr Healthcare Ind Innovat Taipei Taiwan Xiamen Univ Malaysia Sch Elect & Comp Engn Jalan Sunsuria Sepang Selangor Malaysia Natl Univ Tainan Dept Appl Math Tainan Taiwan Feng Chia Univ Dept Elect Engn Taichung Taiwan
出 版 物:《JOURNAL OF FOOD ENGINEERING》 (食品工程杂志)
年 卷 期:2021年第290卷
页 面:110186-110186页
核心收录:
学科分类:0832[工学-食品科学与工程(可授工学、农学学位)] 0817[工学-化学工程与技术] 08[工学]
基 金:Ministry of Science and Technology (MOST) Taiwan [MOST 108-2221-E-035066- MOST 108-2218-E-009-054-MY2 MOST 108-2218-E-035-007- MOST 108-2218-E-227-002- MOST-108-2115-M-227-001-MY2]
主 题:Mask R-CNN Ham Numerical algorithm Volume
摘 要:In literature, there exist many attempts to determine the surface area and volume of an irregular object using automated image processing techniques. This paper expanded previous work on predicting the volume of ellipsoidal hams by using both image processing techniques and numerical methods. Novel algorithms were proposed to improve the prediction accuracy and robustness of the volume estimation mechanism. Particularly, the work focused on the ham s position in the horizontal viewpoint. An industrial robotic arm was utilized to lift the ham object and rotate it at a fixed controlled speed to maximize data consistency. Then, a Mask Region-based convolutional neural network approach was used to extract the ham object s features. Experiments were conducted on 16 newly collected ham datasets. In this paper, performance comparisons between this and the previous work were reported and detailed analyses presented. Particularly, three numerical algorithms (i.e., based on the minor axis, Y-direction, and k-nearest neighbor) were introduced to enhance volume prediction in the two databases. The new algorithm exhibited a 27% higher performance than that of the previous work s algorithm. Related theoretical and conceptual frameworks were discussed to further provide evidence and insights on the proposed mechanism.