Detection of conducting particles bonding in the circuit of liquid crystal display
- 物理技术－已发表论文 
在薄膜晶体管液晶显示器线路检测中,常通过对线路中的导电薄膜粒子的计数和定位实现其导电性的自动检测。为了解决窄边框线路中粒子密度增大带来的粒子重叠; 问题,提出一种采用微分干涉成像和掩模法结合k均值聚类的算法,在分离出粒子的亮、暗部后,结合图像熵值和粒子的凸性准确分割出粒子。讨论了聚类簇选值的; 影响,通过不同粒子密度、不同粒子尺寸的样本检验本文算法,并与以往的梯度结合灰度的方法进行对比。结果表明:本文算法在粒子密度较小的区域能达到92.; 6%的识别率,在粒子密度较大的区域也能达到86%的识别率,分别比梯度加灰度的方法提高了9.9%和42.7%。解决了粒子重叠的问题,并且对光场和成; 像效果有更好的鲁棒性。By counting and locating anisotropic conductive film (ACF)particles in; the circuit of thin film transistor liquid crystal display(TFT-LCD),it; can determine the circuit's conductivity.In order to solve the overlap; problem caused by density increasing of particles in narrow bezel,we put; forward a algorithm based on differential interference; contrast(DIC)imaging,the algorithm integrates mask method and k-means; clustering detection algorithm.After separating particles of bright and; shadow, we can effectively segment the particles by judging the entropy; of image and the convexity of particles. The value of clustering cluster; is discussed,and comparing with the previous method based on gradient; and gray level,we test the samples of different particle density and; particle size with our proposed algorithm.It indicates that in the case; of circuit with the lower particle density,the recognition rate of our; method can reach 92.6%,in the area with the higher particle density,the; recognition rate can also reach 86%,it is higher than the recognition; rate of method combined gradient and gray respectively by 9.9%and; 42.7%.The proposed algorithm is also more robust to the light field and; the imaging effect.