Compared to brick-and-mortar retail stores, online shopping has many advantages, such as unrestricted shopping hours as well as a greater focus on functionality and more efficient information retrieval. However, the current online shopping systems only present products using text and images, and they cannot provide end-users with an immersive shopping experience [1-4]. For end-users, the product representations in the form of images and text in scrollable lists are difficult to understand, i.e., end-users cannot obtain a clear sense of the size, weight, and shape of the product. In addition, the unnatural interaction techniques, such as scrolling a list or navigating through product
In the design of gesture-based user interfaces, continuously recognizing complex dynamic gestures is a challenging task, because of the high-dimensional information of gestures, ambiguous semantic meanings of gestures, and the presence of unpredictable non-gesture body motions. In this paper, we propose a hybrid model that can leverage the time-series modeling ability of hidden Markov model and the fuzzy inference ability of fuzzy neural network. First, a complex dynamic gesture is decomposed and fed into the hybrid model. The likelihood probability of an observation sequence estimated by the hidden Markov model is used as fuzzy membership degree of the corresponding fuzzy class variable in fuzzy neural network. Next, fuzzy rule modeling and fuzzy inference are performed by fuzzy neural network for gesture classification. To spot key gestures accurately, a threshold model is introduced to calculate the likelihood threshold of an input pattern and provide a reliability measure of whether to accept the pattern as a gesture. Finally, the proposed method is applied to recognize ten user-defined dynamic gestures for controlling interactive digital television in a smart room. Results of our experiment show that B Huiyue Wu the proposed method performed better in terms of spotting reliability and recognition accuracy than conventional gesture recognition methods.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.