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From video doorbells to modern vehicles, the types of applications that rely on cameras are growing. For many of these systems, having access to real-time, high-resolution imagery is integral to their effective operation. After all, if the doorbell can¡¯t clearly identify a package thief or the car isn¡¯t able to accurately detect a roadway obstruction, their value declines tremendously. Increasingly, deep-learning models are being implemented to enhance the vision-processing capabilities that these products need.
Increasingly, vision-processing applications are applying artificial intelligence (AI) in their designs to enhance the quality of the images and/or to take advantage of advanced AI features like object detection. Computer vision applications that relied exclusively on the highest level of digital signal processing operations (DSP) are now mixing DSP and AI. Now, there¡¯s a neural processor IP solution available that delivers the industry¡¯s smallest power and area footprint to support up to two trillion operations per second (TOPS) of the latest AI networks, including transformers. Read on to learn more about how the new Synopsys ARC? NPX6-1K NPU Processor IP with 1,024 MACs provides an ideal option for designers ready to introduce greater intelligence into their chip designs.
Demand for AI capabilities in a variety of products is growing, and nowhere is this more evident than in computational imaging. The ubiquity of cameras integrated into smartphones (and delivery of high-quality images) has paved the way for cameras to be included in everything from doorbells to medical devices. There are dual branches in computational imaging:
AI-driven computer vision technology is proving to be essential for delivering accurate, real-time, high-resolution imagery. Traditionally, convolutional neural networks (CNNs) were the dominant algorithm in computer vision applications. Neural networks have been commonly used for object detections and are now playing an important role in image quality improvement, taking over tasks that were once done by digital signal processors. For example, because they can embed knowledge of what a good image should look like, neural networks can upscale video streams to 4x the resolution via super resolution networks, and they can be used to reduce noise and enhance low light performance. Features such as blur reduction, high dynamic range, and wide dynamic range are also within the realm of AI-driven computer vision capabilities.
Now, AI transformers¡ªoriginally developed for natural language processing such as translation and question answering¡ªare emerging as the highest accuracy option. Transformers, based on a self-attention mechanism, are better at learning complex patterns for accurate object detection than CNNs, and therefore can better understand context. Used together with CNNs, the combination of the two deep-learning models can significantly enhance computer vision and image processing accuracy.
With 1,024 MACs, the new ARC NPX6-1K NPU IP provides a good entry point for designers to add support for the latest neural networks¡ªespecially transformers¡ªto power- and area-constrained vision-processing designs. Another version, the ARC NPX-1KFS NPU IP, provides state-of-the-art hardware safety features to accelerate ISO 26262 certification for automotive designs. The NPX6-1K and 1KFS processors can be tightly integrated with the Synopsys ARC VPX2 DSP Processor IP, to produce the market¡¯s most area- and power-efficient AI + DSP solution for DSP and neural network transformers. The combined NPX6 and VPX solutions can scale upwards and configurations can be mixed and matched to support a large DSP with small AI, large AI, small DSP, etc.
There are a variety of use cases for a 1,024 MAC neural network processor. Here are a few examples:
The list goes on, as the availability of a processor such as the ARC NPX6-1K opens up possibilities to integrate AI into a new array of applications.
With the newest additions, the ARC NPX NPU IP family now scales from 1K to 96K MACs and is capable of delivering up to 3,500 TOPS performance on a single SoC. The Synopsys ARC MetaWare MX Development Toolkit provides a single toolchain to accelerate application development with the IP and automatically partition algorithms across MAC resources for efficient processing. Earlier this spring, the IP was named the ¡°Best Edge AI Processor¡± in the 2023 Edge AI and Vision Product of the Year Awards presented by the Edge AI and Vision Alliance.
For more insights about the ARC NPX6-1K, read our white paper, ¡°Computational Imaging Craves System-Level Design and Simulation Tools to Leverage Disruptive AI in Embedded Vision.¡±