Semantic segmentation is applied in scenarios requiring pixel-level understanding of images. In autonomous vehicles, it is used to identify and differentiate between road elements, such as lanes, pedestrians, and vehicles. In medical imaging, semantic segmentation helps in identifying regions of interest, such as tumors or organs, in X-rays or MRI scans. Other applications include agriculture (e.g., plant and soil segmentation), environmental monitoring (e.g., land-use classification), and video analytics (e.g., activity recognition). The ability to assign meaningful labels to each pixel makes semantic segmentation valuable in diverse domains.
Where do you apply the concept of 'semantic segmentation'?

- Exploring Vector Database Use Cases
- Getting Started with Zilliz Cloud
- AI & Machine Learning
- Information Retrieval 101
- Accelerated Vector Search
- All learn series →
Recommended AI Learn Series
VectorDB for GenAI Apps
Zilliz Cloud is a managed vector database perfect for building GenAI applications.
Try Zilliz Cloud for FreeKeep Reading
What techniques ensure robust feature extraction in noisy environments?
Robust feature extraction in noisy environments can be achieved using several techniques that aim to enhance the quality
Can embeddings be used for clustering data?
Yes, embeddings can be used for clustering data by representing data points as vectors in a continuous space. Once the d
What is the role of NLP in multimodal AI?
NLP plays a critical role in multimodal AI by enabling systems to process and integrate text with other data types, such