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A Review on View-Invariant Human Gesture Encroachments

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Smart Systems and IoT: Innovations in Computing

Part of the book series: Smart Innovation, Systems and Technologies ((SIST,volume 141))

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Abstract

A perspective issue which is very critical is the bottleneck problem for our movement investigation, and researchers have focused toward view-invariant motion detection problem and have accomplished motivating advancement. A defy here is to discover a system that can perceive human movement patterns to achieve progressively refined dimensions of behavior portrayal, and postures recognition, activities identification with the end goal to enable humans to comprehend the coordinated procedure of visual analysis of human movement. However, it also presents a comprehensive advancement in three noteworthy issues engaged with a general human movement investigation framework, in particular, human recognition, view-invariant estimation, posture portrayal, and behavior analysis. Finally, it evaluates the advancement up until now and frameworks some evaluation difficulties. Also, answers for what is fundamental to accomplish the objectives of human movement investigation and future perspectives.

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Correspondence to Ayush Mittal .

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Mittal, A., Jaggi, B.S. (2020). A Review on View-Invariant Human Gesture Encroachments. In: Somani, A.K., Shekhawat, R.S., Mundra, A., Srivastava, S., Verma, V.K. (eds) Smart Systems and IoT: Innovations in Computing. Smart Innovation, Systems and Technologies, vol 141. Springer, Singapore. https://doi.org/10.1007/978-981-13-8406-6_73

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