编辑:
2014-11-06
关键词:种蛋筛选;成活性检测;机器视觉;图像处理;遗传算法;
微粒群算法;神经网络
Study on Automatic Identifying Quality and Fertility of Hatching Egg
Based on Machine Vision System
Abstract
Identifying quality and fertility of hatching eggs are an important and hard work in the farms. Manual inspection suffers from visual stress and tiredness and is low accuracy and time-consuming. An automatic and practical detection system based on machine vision system and ANN is developed instead of manual inspection of hatching egg for improving detecting accuracy and effciency.
1. The machine vision hardware system is built for identifying exterior quality and fertility of hatching egg .The light source and background color are found out through a lot of experiments. Camera calibration is done for correcting image distortion, and its accuracy is able to match the demand of identifying exterior quality of hatching egg.
2. Based on machine vision technique, criterion is proposed for comprehensive evaluating egg’s exterior quality by weight, shape, eggshell defect feature and eggshell color, and method of egg quality classification is developed.
(1) The projection area of egg image is extracted by 0-order moment and used to classify egg weight instead of metage. The classification accuracy is 97.73% for bigger eggs, 97.04% for normal eggs, and 96.51% for smaller eggs.
(2) Threshold recognition and 8-connected boundary tracking method are combined to extract the defect feature on eggshell, and its classification accuracy is 91.25% for cracked eggs, 94.18% for dirt stained, blood spotted eggs and 96.36% for normal eggs.
(3) Egg shape index and radius differences are extracted as shape feature parameters, a two-step shape measurement method is proposed based on machine vision, moment technique and neural network. An improved immune GA algorithm is put forward, which is used to optimize topology structure of LMBP neural network for detecting quality of hatching egg automatically.
Key Words: Fertility identification; Image processing;
标签:论文格式标准
精品学习网(51edu.com)在建设过程中引用了互联网上的一些信息资源并对有明确来源的信息注明了出处,版权归原作者及原网站所有,如果您对本站信息资源版权的归属问题存有异议,请您致信qinquan#51edu.com(将#换成@),我们会立即做出答复并及时解决。如果您认为本站有侵犯您权益的行为,请通知我们,我们一定根据实际情况及时处理。