Y. Heryadi, E. Irwansyah, Eka Miranda, Haryono Soeparno, Herlawati, Kiyota Hashimoto
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引用次数: 2
摘要
语义图像分割是计算机视觉中一个有趣的问题,具有许多潜在的应用前景。DeepLab模型与Resnet和Conditional Random Field网络相结合,使DeepLab模型成为一个相当深度的网络结构,以提高语义分割性能。许多先前的研究认为深度学习模型的深度存在一定的限制,因为深度结构可能导致梯度消失/爆炸,从而影响模型的性能。本文通过实验研究,比较了不同网络层的ImageNet预训练Resnet变体模型在DeepLab模型中作为特征提取器解决语义图像分割任务的效果。本研究采用Resnet34、Resnet50和Resnet101三种模型作为deeplabv3的网络提取器。实验发现,DeepLabV3- Resnet34、DeepLabV3- resnet50和DeepLabV3- resnet101的最佳准确率和平均准确率分别为(0.87,0.86)、(0.86,0.84)和(0.92,0.88)。实验结果表明,DeepLabV3-Resnet101的语义分割性能优于其他模型
The Effect of Resnet Model as Feature Extractor Network to Performance of DeepLabV3 Model for Semantic Satellite Image Segmentation
Semantic image segmentation is an interesting problem in Computer Vision with many potential applications. The DeepLab model is combined with two other networks: Resnet and Conditional Random Field networks, making the DeepLab model a fairly deep network structure to increase semantic segmentation performance. Many previous studies argued that there are some limits on the deep learning model's depth as the deep structure may lead to vanishing/exploding gradient, which the model's performance. This paper presents an experimental study to compare the effect of several ImageNet pre-trained Resnet variant models with different network layers used as feature extractor in DeepLab model to solve semantic image segmentation task. In this study, three Resnet34, Resnet50, and Resnet101 models as network extractor of DeepLabV3were explored. The experiment found that semantic image segmentation model performance measured by the best accuracy and average accuracies of DeepLabV3- Resnet34, DeepLabV3-Resnet50, and DeepLabV3-Resnet101 are (0.87, 0.86) (0.86, 0.84), and (0.92, 0.88) respectively. Based on the experiment, DeepLabV3-Resnet101 achieved the best semantic segmentation performance than the other models