| نویسندگان | Hassan Farsi,Sajad Mohamadzadeh |
| نشریه | Plos One |
| شماره صفحات | 1-25 |
| شماره سریال | 20 |
| شماره مجلد | 1 |
| ضریب تاثیر (IF) | 2.806 |
| نوع مقاله | Full Paper |
| تاریخ انتشار | 2025 |
| رتبه نشریه | ISI |
| نوع نشریه | چاپی |
| کشور محل چاپ | ایران |
| نمایه نشریه | JCR،Scopus |
چکیده مقاله
This paper presents a novel method for improving semantic segmentation performance in
computer vision tasks. Our approach utilizes an enhanced UNet architecture that leverages
an improved ResNet50 backbone. We replace the last layer of ResNet50 with deformable
convolution to enhance feature representation. Additionally, we incorporate an attention
mechanism, specifically ECA-ASPP (Attention Spatial Pyramid Pooling), in the encoding
path of UNet to capture multi-scale contextual information effectively. In the decoding path
of UNet, we explore the use of attention mechanisms after concatenating low-level features
with high-level features. Specifically, we investigate two types of attention mechanisms:
ECA (Efficient Channel Attention) and LKA (Large Kernel Attention). Our experiments dem-
onstrate that incorporating attention after concatenation improves segmentation accuracy.
Furthermore, we compare the performance of ECA and LKA modules in the decoder path.
The results indicate that the LKA module outperforms the ECA module. This finding high-
lights the importance of exploring different attention mechanisms and their impact on seg-
mentation performance. To evaluate the effectiveness of the proposed method, we conduct
experiments on benchmark datasets, including Stanford and Cityscapes, as well as the
newly introduced WildPASS and DensPASS datasets. Based on our experiments, the pro-
posed method achieved state-of-the-art results including mIoU 85.79 and 82.25 for the
Stanford dataset, and the Cityscapes dataset, respectively. The results demonstrate that
our proposed method performs well on these datasets, achieving state-of-the-art results
with high segmentation accuracy.
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