Human Activity Recognition Based-on Conditional Random Fields with Human Body Parts

2016 ◽  
Vol 10 (4) ◽  
pp. 408-415
Author(s):  
Chen Yehui ◽  
Liu Hao ◽  
Yi Bo
2016 ◽  
Author(s):  
Μιχαήλ Βρίγκας

Η διατριβή ασχολείται με το πρόβλημα της αναγνώρισης της ανθρώπινης δραστηριότητας από εικονοσειρές και απλές εικόνες, το οποίο ανήκει στην ευρύτερη περιοχή της υπολογιστικής όρασης. Για την επίλυση του προβλήματος χρησιμοποιήθηκαν τα υπό συνθήκη τυχαία πεδία συνδυάζοντας δεδομένα από πολλαπλές πηγές. Επιπλέον, προτάθηκε μια καινούρια μέθοδος ταξινόμησης που βασίζεται στην προνομιακή πληροφορία, η oποία δίδεται ως επιπλέων είσοδος στο μοντέλο και είναι διαθέσιμη μόνο στην φάση της εκπαίδευσης αλλά όχι στην φάση του ελέγχου. Τα πειραματικά αποτελέσματα δείχνουν ότι αυτού του είδους η πληροφορία βοηθά στο να δημιουργήσουμε έναν ισχυρότερο ταξινομητή απ' ότι κάποιος θα μάθαινε χωρίς αυτήν, ενώ αυξάνει σημαντικά την ακρίβεια της αναγνώρισης του μοντέλου.


2019 ◽  
Vol 2019 ◽  
pp. 1-14 ◽  
Author(s):  
Muhammad Hameed Siddiqi ◽  
Madallah Alruwaili ◽  
Amjad Ali ◽  
Saad Alanazi ◽  
Furkh Zeshan

In healthcare, the analysis of patients’ activities is one of the important factors that offer adequate information to provide better services for managing their illnesses well. Most of the human activity recognition (HAR) systems are completely reliant on recognition module/stage. The inspiration behind the recognition stage is the lack of enhancement in the learning method. In this study, we have proposed the usage of the hidden conditional random fields (HCRFs) for the human activity recognition problem. Moreover, we contend that the existing HCRF model is inadequate by independence assumptions, which may reduce classification accuracy. Therefore, we utilized a new algorithm to relax the assumption, allowing our model to use full-covariance distribution. Also, in this work, we proved that computation wise our method has very much lower complexity against the existing methods. For the experiments, we used four publicly available standard datasets to show the performance. We utilized a 10-fold cross-validation scheme to train, assess, and compare the proposed model with the conditional learning method, hidden Markov model (HMM), and existing HCRF model which can only use diagonal-covariance Gaussian distributions. From the experiments, it is obvious that the proposed model showed a substantial improvement with p value ≤0.2 regarding the classification accuracy.


Sensors ◽  
2021 ◽  
Vol 21 (7) ◽  
pp. 2368
Author(s):  
Fatima Amjad ◽  
Muhammad Hassan Khan ◽  
Muhammad Adeel Nisar ◽  
Muhammad Shahid Farid ◽  
Marcin Grzegorzek

Human activity recognition (HAR) aims to recognize the actions of the human body through a series of observations and environmental conditions. The analysis of human activities has drawn the attention of the research community in the last two decades due to its widespread applications, diverse nature of activities, and recording infrastructure. Lately, one of the most challenging applications in this framework is to recognize the human body actions using unobtrusive wearable motion sensors. Since the human activities of daily life (e.g., cooking, eating) comprises several repetitive and circumstantial short sequences of actions (e.g., moving arm), it is quite difficult to directly use the sensory data for recognition because the multiple sequences of the same activity data may have large diversity. However, a similarity can be observed in the temporal occurrence of the atomic actions. Therefore, this paper presents a two-level hierarchical method to recognize human activities using a set of wearable sensors. In the first step, the atomic activities are detected from the original sensory data, and their recognition scores are obtained. Secondly, the composite activities are recognized using the scores of atomic actions. We propose two different methods of feature extraction from atomic scores to recognize the composite activities, and they include handcrafted features and the features obtained using the subspace pooling technique. The proposed method is evaluated on the large publicly available CogAge dataset, which contains the instances of both atomic and composite activities. The data is recorded using three unobtrusive wearable devices: smartphone, smartwatch, and smart glasses. We also investigated the performance evaluation of different classification algorithms to recognize the composite activities. The proposed method achieved 79% and 62.8% average recognition accuracies using the handcrafted features and the features obtained using subspace pooling technique, respectively. The recognition results of the proposed technique and their comparison with the existing state-of-the-art techniques confirm its effectiveness.


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