ARTÍCULO
TITULO

A New Method for Extracting Laver Culture Carriers Based on Inaccurate Supervised Classification with FCN-CRF

Xinliang Pan    
Tao Jiang    
Zhen Zhang    
Baikai Sui    
Chenxi Liu and Linjing Zhang    

Resumen

Timely monitoring of marine aquaculture has considerable significance for marine ecological protection and maritime safety and security. Considering that supervised learning needs to rely on a large number of training samples and the characteristics of intensive and regular distribution of the laver aquaculture zone, in this paper, an inaccurate supervised classification model based on fully convolutional neural network and conditional random filed (FCN-CRF) is designed for the study of a laver aquaculture zone in Lianyungang, Jiangsu Province. The proposed model can extract the aquaculture zone and calculate the area and quantity of laver aquaculture net simultaneously. The FCN is used to extract the laver aquaculture zone by roughly making the training label. Then, the CRF is used to extract the isolated laver aquaculture net with high precision. The results show that the kappa" role="presentation">??????????kappa k a p p a coefficient of the proposed model is 0.984, the F1" role="presentation">??1F1 F 1 is 0.99, and the recognition effect is outstanding. For label production, the fault tolerance rate is high and does not affect the final classification accuracy, thereby saving more label production time. The findings provide a data basis for future aquaculture yield estimation and offshore resource planning as well as technical support for marine ecological supervision and marine traffic management.