Object Detection based on the Collection of Geometric Evidence
Hui Wei, Fu-yu Tang

TL;DR
This paper introduces a shape-based object recognition method using geometric evidence collection, which is robust to environmental changes and does not require training, offering a promising approach for practical applications.
Contribution
It presents a novel shape template method that leverages geometric evidence and solves a global optimization problem without complex feature vectors or training.
Findings
High recognition accuracy under varied environmental conditions
Effective in invariant recognition and geometric pinpointing
Efficient and practical for real-world applications
Abstract
Artificial objects usually have very stable shape features, which are stable, persistent properties in geometry. They can provide evidence for object recognition. Shape features are more stable and more distinguishing than appearance features, color features, grayscale features, or gradient features. The difficulty with object recognition based on shape features is that objects may differ in color, lighting, size, position, pose, and background interference, and it is not currently possible to predict all possible conditions. The variety of objects and conditions renders object recognition based on geometric features very challenging. This paper provides a method based on shape templates, which involves the selection, collection, and combination discrimination of geometric evidence of the edge segments of images, to find out the target object accurately from background, and it is able…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Image Retrieval and Classification Techniques · Graph Theory and Algorithms
