PaddleSeg: A High-Efficient Development Toolkit for Image Segmentation
Yi Liu, Lutao Chu, Guowei Chen, Zewu Wu, Zeyu Chen, Baohua Lai, Yuying, Hao

TL;DR
PaddleSeg is a comprehensive, efficient toolkit that supports designing, training, and deploying a wide range of image segmentation models with high accuracy and practical industrial applications.
Contribution
It introduces a modular, high-efficiency toolkit supporting numerous models and pre-trained weights, facilitating development and deployment of image segmentation solutions.
Findings
Supports around 20 segmentation models and 50 pre-trained models.
Provides benchmarks showing competitive accuracy of trained models.
Includes practical industrial applications and case studies.
Abstract
Image Segmentation plays an essential role in computer vision and image processing with various applications from medical diagnosis to autonomous car driving. A lot of segmentation algorithms have been proposed for addressing specific problems. In recent years, the success of deep learning techniques has tremendously influenced a wide range of computer vision areas, and the modern approaches of image segmentation based on deep learning are becoming prevalent. In this article, we introduce a high-efficient development toolkit for image segmentation, named PaddleSeg. The toolkit aims to help both developers and researchers in the whole process of designing segmentation models, training models, optimizing performance and inference speed, and deploying models. Currently, PaddleSeg supports around 20 popular segmentation models and more than 50 pre-trained models from real-time and…
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Taxonomy
TopicsAdvanced Neural Network Applications · Advanced Image and Video Retrieval Techniques · Medical Image Segmentation Techniques
