Time-Dependency-Aware Driver Distraction Detection Using Linear-Chain Conditional Random Fields

Author(s):  
Baotian He ◽  
Penghui Li ◽  
Natasha Merat ◽  
Yibing Li
Author(s):  
Yi Zhu

The study of human activity–travel patterns for urban planning has evolved a long way in theories, methodologies, and applications. However, the scarcity of data has become a major barrier for the advancement of research in the field. Recently, the proliferation of urban sensing and location-based devices generates voluminous streams of spatio-temporal registered information. In this study, we propose an approach using the linear-chain Conditional Random Fields (CRFs) model to learn the spatio-temporal correspondences of different types of activities and the inter-dependencies among sequential activities from training dataset such as the household travel or time use surveys, and to infer the hidden activity types associated with urban sensing data. The performance of the CRFs model is compared against the Random Forest (RF) model, which has been used in a number of existing studies. The results show that the linear-chain CRFs models generally outperform the RF counterparts with respect to classification accuracy of activity types, in particular for those travelers having more outdoor daily activities. The proposed methodology is demonstrated by reconstructing the activity landscape of the surrounding area of a major Mass Rail Transit station in Singapore using the transit smart card transaction data. The inferred activities from the transit smart card data are expected to complement the ground surveys and improve our understanding of the interactions of different components of activities/travels as well as the relationship between urban space and human activities.


Author(s):  
Bowen Yu ◽  
Zhenyu Zhang ◽  
Tingwen Liu ◽  
Bin Wang ◽  
Sujian Li ◽  
...  

Relation extraction studies the issue of predicting semantic relations between pairs of entities in sentences. Attention mechanisms are often used in this task to alleviate the inner-sentence noise by performing soft selections of words independently. Based on the observation that information pertinent to relations is usually contained within segments (continuous words in a sentence), it is possible to make use of this phenomenon for better extraction. In this paper, we aim to incorporate such segment information into neural relation extractor. Our approach views the attention mechanism as linear-chain conditional random fields over a set of latent variables whose edges encode the desired structure, and regards attention weight as the marginal distribution of each word being selected as a part of the relational expression. Experimental results show that our method can attend to continuous relational expressions without explicit annotations, and achieve the state-of-the-art performance on the large-scale TACRED dataset.


2012 ◽  
Vol 33 (13) ◽  
pp. 1776-1784 ◽  
Author(s):  
Velimir M. Ilić ◽  
Dejan I. Mančev ◽  
Branimir T. Todorović ◽  
Miomir S. Stanković

Author(s):  
Yoshimasa Tsuruoka ◽  
Jun'ichi Tsujii ◽  
Sophia Ananiadou

Energies ◽  
2019 ◽  
Vol 12 (9) ◽  
pp. 1797 ◽  
Author(s):  
Hui He ◽  
Zixuan Liu ◽  
Runhai Jiao ◽  
Guangwei Yan

In a real interactive service system, a smart meter can only read the total amount of energy consumption rather than analyze the internal load components for users. Nonintrusive load monitoring (NILM), as a vital part of smart power utilization techniques, can provide load disaggregation information, which can be further used for optimal energy use. In our paper, we introduce a new method called linear-chain conditional random fields (CRFs) for NILM and combine two promising features: current signals and real power measurements. The proposed method relaxes the independent assumption and avoids the label bias problem. Case studies on two open datasets showed that the proposed method can efficiently identify multistate appliances and detect appliances that are not easily identified by other models.


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