Intel corporation (20240320953). METHODS AND APPARATUS FOR EXPLAINABLE MULTI-SCALE GAUSSIAN MIXTURE MODEL DISTANCE simplified abstract
Contents
METHODS AND APPARATUS FOR EXPLAINABLE MULTI-SCALE GAUSSIAN MIXTURE MODEL DISTANCE
Organization Name
Inventor(s)
Anthony Rhodes of Portland OR (US)
Ilke Demir of Hermosa Beach CA (US)
METHODS AND APPARATUS FOR EXPLAINABLE MULTI-SCALE GAUSSIAN MIXTURE MODEL DISTANCE - A simplified explanation of the abstract
This abstract first appeared for US patent application 20240320953 titled 'METHODS AND APPARATUS FOR EXPLAINABLE MULTI-SCALE GAUSSIAN MIXTURE MODEL DISTANCE
Simplified Explanation: The patent application describes an apparatus that can compare two saliency maps associated with an image dataset by analyzing their pixel-level intensity and spatial properties.
- Key Features and Innovation:
- Accesses and encodes pixel-level intensity of two saliency maps - Generates a saliency comparison metric based on the intensity - Compares spatial properties of the saliency maps using the metric
- Potential Applications:
- Image processing and analysis - Computer vision applications - Visual attention modeling
- Problems Solved:
- Efficient comparison of saliency maps - Enhanced understanding of visual attention mechanisms - Improved image analysis techniques
- Benefits:
- Better insights into image saliency - Enhanced image processing capabilities - Advanced computer vision algorithms
- Commercial Applications:
- Image recognition software - Visual search engines - Medical imaging analysis tools
- Prior Art:
- Researchers in the field of computer vision and image processing - Academic studies on saliency mapping techniques
- Frequently Updated Research:
- Latest advancements in computer vision algorithms - New developments in image analysis technologies
Questions about Saliency Map Comparison: 1. How does the apparatus encode the pixel-level intensity of the saliency maps? 2. What are the potential real-world applications of comparing saliency maps in image datasets?
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Original Abstract Submitted
an example apparatus includes interface circuitry, machine-readable instructions, and at least one processor circuit to be programmed by the machine-readable instructions to access a first saliency map and a second saliency map associated with an image dataset, encode pixel-level intensity of the first saliency map, encode pixel-level intensity of the second saliency map, generate a saliency comparison metric based on the pixel-level intensity of the first saliency map and the pixel-level intensity of the second saliency map, and compare spatial properties of the first saliency map and the second saliency map using the saliency comparison metric.