Ball-Scale Based Hierarchical Multi-Object Recognition in 3D Medical Images
Ulas Bagci, Jayaram K. Udupa, Xinjian Chen

TL;DR
This paper introduces a novel hierarchical method using ball-scale (b-scale) for automatic multi-object recognition in 3D medical images, enabling quick and accurate placement of shape models without extensive search or optimization.
Contribution
The paper presents a new approach combining b-scale encoding and hierarchical positioning for fast, automatic multi-object recognition in 3D medical images, improving accuracy and efficiency.
Findings
Incorporating multiple objects enhances recognition accuracy.
Hierarchical framework allows coarse-to-fine recognition.
Scale information effectively guides model placement.
Abstract
This paper investigates, using prior shape models and the concept of ball scale (b-scale), ways of automatically recognizing objects in 3D images without performing elaborate searches or optimization. That is, the goal is to place the model in a single shot close to the right pose (position, orientation, and scale) in a given image so that the model boundaries fall in the close vicinity of object boundaries in the image. This is achieved via the following set of key ideas: (a) A semi-automatic way of constructing a multi-object shape model assembly. (b) A novel strategy of encoding, via b-scale, the pose relationship between objects in the training images and their intensity patterns captured in b-scale images. (c) A hierarchical mechanism of positioning the model, in a one-shot way, in a given image from a knowledge of the learnt pose relationship and the b-scale image of the given…
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