Multi-feature Similarity Based Deep Learning Framework for Semantic Segmentation

Harshwardhan Bhangale, R. Bansal, Shrijeet Jain, J. Sarvaiya
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引用次数: 1

Abstract

Liver tumor is one of the significant causes of death among men and women, but it is confirmed that early detection of the disease ensures the long survival of the patient. In our research, a hybrid of Multi-feature pyramid based U-Net, short skip connections and a Feature similarity module are proposed for early tumor detection. The proposed algorithm focuses on improving the tumor segmentation performance with fewer training parameters. The robustness of the proposed algorithm is claimed on the basis of the dice score coefficient of tumor segmentation. We have achieved a dice score of 0.753 and 0.950 on tumor and liver, respectively on the Liver Tumor Segmentation (LiTS) dataset. In comparison with earlier models, our model has achieved a higher dice coefficient with less training time with nearly 6 million learnable parameters.
基于多特征相似度的深度学习语义分割框架
肝肿瘤是男性和女性死亡的重要原因之一,但已证实,早期发现该疾病可确保患者的长期生存。在我们的研究中,提出了一种基于多特征金字塔的U-Net、短跳连接和特征相似模块的混合方法用于早期肿瘤检测。该算法的重点是在训练参数较少的情况下提高肿瘤分割性能。基于肿瘤分割的骰子分数系数,证明了该算法的鲁棒性。在肝脏肿瘤分割(liver tumor Segmentation, LiTS)数据集上,我们在肿瘤和肝脏上分别获得了0.753和0.950的骰子得分。与早期的模型相比,我们的模型以更少的训练时间和近600万个可学习参数获得了更高的骰子系数。
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