2022
DOI: 10.3389/fnbot.2022.1082346
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Siamese hierarchical feature fusion transformer for efficient tracking

Abstract: Object tracking is a fundamental task in computer vision. Recent years, most of the tracking algorithms are based on deep networks. Trackers with deeper backbones are computationally expensive and can hardly meet the real-time requirements on edge platforms. Lightweight networks are widely used to tackle this issue, but the features extracted by a lightweight backbone are inadequate for discriminating the object from the background in complex scenarios, especially for small objects tracking task. In this paper… Show more

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Cited by 2 publications
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“…• Association Rule Mining: A technique that identifies interesting associations or relationships between items and is often used to find patterns in user behavior and suggest items that are frequently purchased or viewed together [29]. • Attention Mechanism: A mechanism inspired by human attention processes that focuses on specific parts of input data to improve the quality of recommendations by emphasizing important features or items [30]. • Custom Algorithms: Algorithms specifically designed for a particular recommendation system.…”
Section: Figure 3: Algorithms and Year Ratiomentioning
confidence: 99%
“…• Association Rule Mining: A technique that identifies interesting associations or relationships between items and is often used to find patterns in user behavior and suggest items that are frequently purchased or viewed together [29]. • Attention Mechanism: A mechanism inspired by human attention processes that focuses on specific parts of input data to improve the quality of recommendations by emphasizing important features or items [30]. • Custom Algorithms: Algorithms specifically designed for a particular recommendation system.…”
Section: Figure 3: Algorithms and Year Ratiomentioning
confidence: 99%