2019
DOI: 10.48550/arxiv.1911.03667
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Factored Latent-Dynamic Conditional Random Fields for Single and Multi-label Sequence Modeling

Abstract: Conditional Random Fields (CRF) are frequently applied for labeling and segmenting sequence data. introduced hidden state variables in a labeled CRF structure in order to model the latent dynamics within class labels, thus improving the labeling performance. Such a model is known as Latent-Dynamic CRF (LDCRF). We present Factored LDCRF (FLDCRF), a structure that allows multiple latent dynamics of the class labels to interact with each other. Including such latent-dynamic interactions leads to improved labelin… Show more

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“…Machine learning was used to predict pedestrian behaviour at crossings [93] when mixed with cyclists [94] and walking speed respectively [95]. Of particular interest is the approach developed by Neogi and Dauwels [94] that was able to predict the pedestrian stopping 0.9 seconds before crossing the road in front of the vehicle. In comparison to the benchmarked system, their approach was able to detect the pedestrian stopping 0.52 seconds before the actual event.…”
Section: Pedestrian Behaviourmentioning
confidence: 99%
“…Machine learning was used to predict pedestrian behaviour at crossings [93] when mixed with cyclists [94] and walking speed respectively [95]. Of particular interest is the approach developed by Neogi and Dauwels [94] that was able to predict the pedestrian stopping 0.9 seconds before crossing the road in front of the vehicle. In comparison to the benchmarked system, their approach was able to detect the pedestrian stopping 0.52 seconds before the actual event.…”
Section: Pedestrian Behaviourmentioning
confidence: 99%