7,505 research outputs found

    Improved Memoryless RNS Forward Converter Based on the Periodicity of Residues

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    The residue number system (RNS) is suitable for DSP architectures because of its ability to perform fast carry-free arithmetic. However, this advantage is over-shadowed by the complexity involved in the conversion of numbers between binary and RNS representations. Although the reverse conversion (RNS to binary) is more complex, the forward transformation is not simple either. Most forward converters make use of look-up tables (memory). Recently, a memoryless forward converter architecture for arbitrary moduli sets was proposed by Premkumar in 2002. In this paper, we present an extension to that architecture which results in 44% less hardware for parallel conversion and achieves 43% improvement in speed for serial conversions. It makes use of the periodicity properties of residues obtained using modular exponentiation

    Conceptualising Home-Based Child Care: A Study of Home-Based Settings and Practices in Japan and England

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    Home-based child care or childminding as it is commonly known in the United Kingdom (UK) is a service often used by parents and families in many countries. However, despite its prevalence, there is a paucity of research on the subject. Addressing this gap, this study presents new empirical data to better understand this type of provision in supporting children’s learning and development. The paper presents the findings of a qualitative study of home-based child care undertaken in five settings in Japan and England. The study examined caregivers’ activities and their interactions with the children aged 4 months to 4 years. The methods included practitioner interviews, narrative observations, document analysis of activity records, and documentations of the structural and process features of the settings. The study is significant for advancing the international knowledge base of home-based child care in highlighting the service as a form of distinct, specialised care and pedagogy, as well as family support

    Weighted transfer learning for improving motor imagery-based brain-computer interface

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    One of the major limitations of motor imagery (MI)-based brain-computer interface (BCI) is its long calibration time. Due to between sessions/subjects variations in the properties of brain signals, typically a large amount of training data needs to be collected at the beginning of each session to calibrate the parameters of the BCI system for the target user. In this paper, we propose a novel transfer learning approach on the classification domain to reduce the calibration time without sacrificing the classification accuracy of MI-BCI. Thus, when only few subject-specific trials are available for training, the estimation of the classification parameters is improved by incorporating previously recorded data from other users. For this purpose, a regularization parameter is added to the objective function of the classifier to make the classification parameters as close as possible to the classification parameters of the previous users who have feature spaces similar to that of the target subject. In this study, a new similarity measure based on the kullback leibler divergence (KL) is used to measure similarity between two feature spaces obtained using subject-specific common spatial patterns (CSP). The proposed transfer learning approach is applied on the logistic regression classifier and evaluated using three datasets. The results showed that compared to the subject-specific classifier, the proposed weighted transfer learning classifier improved the classification results particularly when few subject-specific trials were available for training (p<0.05). Importantly, this improvement was more pronounced for users with medium and poor accuracy. Moreover, the statistical results showed that the proposed weighted transfer learning classifier performed significantly better than the considered comparable baseline algorithms
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