Knowledge-Assisted Small Object Detection
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Author(s)
Nguyen, Quoc Viet
Huy, Nguyen Thai Viet
Jo, Jun
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Chen, Tong
Cao, Yang
Nguyen, Quoc Viet Hung
Nguyen, Thanh Tam
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Gold Coast, Australia
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Abstract
Small Object Detection (SOD) is a challenging task due to the small size of objects and the complexity of noisy backgrounds, which are common in fields like surveillance and autonomous driving. Traditional detection methods often suffer from information loss, poor feature representation, and localization errors, leading to reduced accuracy. This paper presents a novel approach that integrates knowledge graphs to enhance semantic consistency in small object detection. By quantifying relationships between objects and their environments, the proposed framework refines object predictions using contextual cues. Moreover, we develop a new core model based on YOLOv9, incorporating Space-to-Depth (SPD) layers and Convolutional Block Attention Modules (CBAM) to preserve fine-grained details while focusing on critical regions, significantly boosting detection accuracy. Extensive experiments on benchmark datasets demonstrate that the knowledge-assisted method delivers substantial improvements in average precision and robustness for detecting small objects in practical environments.
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Databases Theory and Applications: 35th Australasian Database Conference, ADC 2024, Gold Coast, QLD, Australia, and Tokyo, Japan, December 16–18, 2024, Proceedings
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Computer vision and multimedia computation
Information and computing sciences
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Le, HD; Jo, J, Knowledge-Assisted Small Object Detection, Databases Theory and Applications: 35th Australasian Database Conference, ADC 2024, Gold Coast, QLD, Australia, and Tokyo, Japan, December 16–18, 2024, Proceedings, 2024, pp. 403-418