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1
Intro
2
Table of Contents
3
Problem Intro
4
Few Shot Classification
5
Weakly Supervised Detection
6
Object Co-Detection
7
How SILCO is Different
8
Overview
9
Backbone & Final Detection
10
Global Average Pooling: Baseline
11
Spatial Similarity Module
12
Method: Feature Reweighting Module Graph Convolutional Networks
13
Training
14
Results Experimental Setup
15
Ablation
16
Effect of Support Images
17
Effect of Object Size
18
Success and Failure Cases
19
Comparative Evaluation
20
Summary and Conclusion
Description:
Learn about SILCO, a novel approach to object detection that requires only a few labeled images, in this 32-minute lecture from the University of Central Florida. Explore the concepts of few-shot classification, weakly supervised detection, and object co-detection. Discover how SILCO differs from traditional methods and delve into its key components, including the backbone architecture, spatial similarity module, and feature reweighting module. Examine the training process, experimental results, and comparative evaluations. Gain insights into the effectiveness of SILCO across various object sizes and scenarios, and understand its potential impact on computer vision applications.

SILCO: Show a Few Images, Localize the Common Object

University of Central Florida
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