2016
DOI: 10.1186/s13640-016-0143-4
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Sequential Monte Carlo filter based on multiple strategies for a scene specialization classifier

Abstract: Transfer learning approaches have shown interesting results by using knowledge from source domains to learn a specialized classifier/detector for a target domain containing unlabeled data or only a few labeled samples. In this paper, we present a new transductive transfer learning framework based on a sequential Monte Carlo filter to specialize a generic classifier towards a specific scene. The proposed framework utilizes different strategies and approximates iteratively the hidden target distribution as a set… Show more

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Cited by 6 publications
(1 citation statement)
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“…We are not aware of any other work accelerating NN inference time via task specialization on video. However, related strategies for specialization have been shown to boost accuracy (but not runtime) [65,68], and there are a range of models designed for detecting specific classes of objects in video. One of the most popular video-based object detection tasks is pedestrian detection [15,28], with a range of NN-based approaches (e.g., [84]).…”
Section: Related Workmentioning
confidence: 99%
“…We are not aware of any other work accelerating NN inference time via task specialization on video. However, related strategies for specialization have been shown to boost accuracy (but not runtime) [65,68], and there are a range of models designed for detecting specific classes of objects in video. One of the most popular video-based object detection tasks is pedestrian detection [15,28], with a range of NN-based approaches (e.g., [84]).…”
Section: Related Workmentioning
confidence: 99%