Abstract
A brief description of researches close to implementation in technical systems is represented in this chapter. Human action recognition and audience analysis systems as well as smart software tool for panorama construction help for a well-being of a human. The application of novel methods in robot navigation systems and the perception of audio visual information for mobile robots are the issues of other innovative investigations. The adaptive comprehensive surveillance algorithms for situation analysis, the enhanced, synthetic, and combined vision technologies for civil aviation, and the navigation techniques reflect the recent achievements in machine vision for robotics and autonomous vehicles. Also the efficient denoising algorithms and the image segmentation based on 2D Markov chains are useful in intelligent recognition systems.
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Jain, L.C., Favorskaya, M.N. (2015). Practical Matters in Computer Vision. In: Favorskaya, M., Jain, L. (eds) Computer Vision in Control Systems-2. Intelligent Systems Reference Library, vol 75. Springer, Cham. https://doi.org/10.1007/978-3-319-11430-9_1
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