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Processors optimize vision software for deep learning applications

August 8, 2017 By Aimee Kalnoskas Leave a Comment

Synopsys, Inc. announced a collaboration with Morpho, Inc. to optimize Morpho’s computational photography software for Synopsys’ DesignWare EV6x Vision Processors. Morpho’s Scene Classifier image classification technology uses deep learning algorithms to analyze visual input and automatically apply tags for classification, searchability and organization. Morpho is optimizing their software to take advantage of the EV6x Vision Processors’ scalable hardware architecture, which includes up to four 512-bit vector DSPs and a fully programmable convolutional neural network (CNN) engine. The combined hardware-software solution enables designers to accelerate image classification and automated tagging tasks in their mobile and surveillance systems-on-chips (SoCs) while consuming significantly less power and memory resources than alternative implementations.

“We see growing demand for image processing software that takes advantage of deep learning networks to reduce computational resource requirements, particularly for battery-powered mobile devices,” said Masayuki Urushiyama, executive vice president at Morpho Inc. “Optimizing our deep learning and image processing software for the DesignWare EV6x Vision Processors enables designers to implement high-quality image recognition and classification solutions that increase the vision processing capabilities of their SoCs and consume much less energy than traditional GPU approaches.”

Morpho’s Scene Classifier uses deep learning to “recognize” essential identifying features for automated, real-time image tagging. Morpho’s portfolio of software algorithms includes high-precision scene recognition technology, motion detection, 360 VR stitching technology and other image processing technology. DesignWare EV6x Vision Processor IP is a family of fully programmable and configurable vision processors that integrate scalar, vector DSP and CNN processing units for highly accurate and fast vision processing. Supported by a comprehensive software programing environment including the ARC MetaWare EV Toolkit, the EV6x Vision Processors offer SoC designers a flexible, power-efficient embedded vision solution that addresses a wide range of automotive, industrial and consumer applications.

“The emergence of deep learning for image classification, detection and recognition enables a new level of image processing efficiency in SoC designs,” said John Koeter, vice president of marketing for IP at Synopsys. “By collaborating with Morpho to optimize their software for our EV6x Vision Processors, we are providing designers with a hardware-software solution that significantly improves the accuracy, performance and power consumption of image processing in power-sensitive applications.”

The DesignWare EV6x Vision Processors are available now. The Morpho Scene Classifier software optimized for EV6x Vision Processors is planned to be available in Q4 2017.

Filed Under: Applications, microcontroller Tagged With: morphoinc, synopsys

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