No more zipper noise! Super-resolution RAW processing technology that removes optical LPF and diffraction blur.
"AIRD (Artificial Intelligence Retina Development, formerly Phase Shift Development)" is a super-resolution RAW development technology using machine learning. It is suitable for RAW development for Optical Learning. It eliminates zipper noise and removes blur caused by optical LPF and diffraction. Additionally, it prevents the occurrence of false colors and improves the resolution of red, blue, green, and monochrome, reducing artifacts such as jaggies. 【Features】 ■ Suitable for RAW development for Optical Learning ■ Removes blur caused by optical LPF and diffraction ■ Reduces sensor noise ■ Minimizes the emphasis on demosaicing degradation *For more details, please refer to the PDF document or feel free to contact us.
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basic information
【Other Machine Learning Algorithms】 ■Keep Resolution Mapping(TM): Geometric transformation using machine learning (such as trapezoidal correction) ■Super Resolution Stepless Zoom(TM): Continuously variable zoom using machine learning *For more details, please refer to the PDF document or feel free to contact us.
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For more details, please refer to the PDF document or feel free to contact us.
Detailed information
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This is the RAW development result using conventional high-performance demosaicing (DLMMSE). It is evident that zipper noise is occurring.
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This is the RAW development result by AIRD (Artificial Intelligence Retina Development). You can see that the zipper noise has disappeared.
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Realop Inc. provides licensing of intellectual property related to image processing (such as our Optical Learning® technology), software development and sales, and technical consulting services. We support our partner companies by offering differentiated technologies related to image processing, thereby enhancing their product capabilities and increasing their revenue. With years of experience, we develop learning-based super-resolution algorithms that take into account the characteristics of hardware and GPUs, so please feel free to contact us if you have any requests.