How to Opt for Semantic Segmentation using Deep Learning

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How to Opt for Semantic Segmentation using Deep Learning

When it comes to the key problems in the wide field of computer vision, semantic segmentation is regarded as the most problematic one. While looking at the bigger picture, semantic segmentation is that high-level task that will pave the complete way towards complete understanding of the scene. Scene understanding is regarded as a core problem for computer vision as an increasing number of new applications nourish the deducing knowledge right from imagery. Human-computer interaction and virtual reality are some of those applications. With the widespread popularity of deep learning in the recent years, various problems related to semantic segmentation are now being tackled with the use of deep architectures, with Convolutional Neural Nets being the most common of all. Also Read, How to Improve the Performance of Deep Learning?

Contents 1. What is the actual concept of semantic segmentation? 2. Existing approaches of semantic segmentation 3. Region-based semantic segmentation 4. Fully convolutional semantic segmentation 5. Weakly supervised semantic segmentation


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