New-Tech Europe | Sep 2017 | Digital Edition

bespoke legacy interfaces to be implemented along with the ability to upgrade to support the latest interface standards. Use of the PL also enables the system to be able to interface with multiple cameras in parallel. What is critical however is the ability to implement the application algorithms without the need to rewrite all the high level algorithms in a hardware description language like Verilog or VHDL. This is where the reVISION™ Stack comes into play. reVISION Stack The reVISION stack enables developers to implement computer vision and machine learning techniques. This is possible using the same high level frame works and libraries when targeting the Zynq- 7000 and Zynq UltraScale+ MPSoC. To enable this, reVISION combines a wide range of resources enabling platform, application and algorithm development. As such, the stack is aligned into three distinct levels: 1. Platform Development - This is the lowest level of the stack and is the one on which the remaining layers of the stack are built. This layer provides the platform definition for the SDSoC™ tool. 2. Algorithm Development - The middle layer of the stack provides support implementing the algorithms required. This layer also provides support for acceleration of both image processing and machine learning inference engines into the programmable logic. 3. Application Development – The highest layer of the stack provides support for industry standard frameworks. These allow for the

Figure 1: Example Applications (Top: facial detection and classification, Bottom: Optical Flow)

allows for a deterministic response time with a reduced latency and power optimal solution. The use of the PL to implement the image processing pipeline also brings with it a wider interfacing capability than traditional CPU/GPU SoC approaches, which come with fixed interfaces. The flexible nature of PL IO structures allows for any to any connectivity, enabling industry standard interfaces such as MIPI, Camera Link, HDMI, etc. The flexible nature also enables

in the processing algorithm. This bottleneck increases as the frame rate and resolution of the image increases. This bottleneck is removed when the solution is implemented using a Zynq-7000 or Zynq UltraScale+ MPSoC device. These devices allow the designer to implement the image processing pipeline within the PL of the device. Creating a true image pipeline in parallel within the PL where the output of one stage is passed to the input of another. This

New-Tech Magazine Europe l 25

Made with FlippingBook flipbook maker