preprintJun 1, 2019Closed access
Bottom-Up Object Detection by Grouping Extreme and Center Points
The University of Texas at Austin
Indexed incrossref
Abstract
With the advent of deep learning, object detection drifted from a bottom-up to a top-down recognition problem. State of the art algorithms enumerate a near-exhaustive list of object locations and classify each into: object or not. In this paper, we show that bottom-up approaches still perform competitively. We detect four extreme points (top-most, left-most, bottom-most, right-most) and one center point of objects using a standard keypoint estimation network. We group the five keypoints into a bounding box if they are geometrically aligned. Object detection is then a purely appearance-based keypoint estimation problem, without region classification or implicit feature learning. The proposed method performs…
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Authors
3Topics & keywords
Topics
Keywords
- Minimum bounding box
- Bounding overwatch
- Object detection
- Artificial intelligence
- Object (grammar)
- Segmentation
- Computer science
- Pattern recognition (psychology)
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