Monash University
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Context Matters: Effective Context Mining for Object Detection and Classification

thesis
posted on 2024-11-28, 21:55 authored by Aijia Yang
This thesis develops innovative context mining methods to address the ambiguity in visual data for object-level visual understanding and the lack of inherent structure in bioinformatic data for cell classification. A context-aware knowledge graph for object-level visual understanding is developed to effectively resolve ambiguities in identifying objects of interest. A structural gene tree method constructed through unsupervised min-max optimization is developed to overcome the challenge of lacking natural structure and domain knowledge in scRNA-seq cell classification. These developments represent original contributions to visual understanding research using visual data and classification research using bioinformatic data, with both methodological and practical significance.

History

Campus location

Australia

Principal supervisor

Chung-hsing Yeh

Additional supervisor 1

Professor Xiaojun Chang

Additional supervisor 2

Dr. Qiuhong Ke

Year of Award

2024

Department, School or Centre

Data Science & Artificial Intelligence

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Information Technology

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