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🦉 Introduction
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iam provide 64-bit processor scalability while combining real-time control with soft and hard engines for graphics and video. In this section we discribe posibilities to build your own younique smart vison system by using the provided infastructur of iam cameras. There are thre three main Topices dicussed topics discussed below. The iam basic system simply used describes the out-of-the-box system. With the provided tools it is easy to configure the vision right camera setup. Followed by The next section gives an introduction to the iam customization possibilities. The iam ML version covers the case of using is the best starting point for artificial intelligence application and provides an Deep Learning Processing Unit in the FPGA section of the system. |
iam Basic System
The iam basic system is sketched below. In the out-of-the-box state the camera performs as an common GigE-Vision device and makes it easy to install the system and finding the right camera setup.
How to start with the iam camera system is described in the Quick Start section. The section SynView gives are more detailed discription of NETs Software Development Kit (SDK).
iam Customization Possibilities
iam provide 64-bit processor scalability while combining real-time control with soft and hard engines for graphics and video. With the NET SDK and GigE-Vision toolboxes sketched below customers can start from an comfortable starting point to build their unique vision system with iam. The open system architecture of iam enables customers to use both CPU and FPGA processing resources in their application.
In the chapters Applications we provide different example projects to transform iam into your own smart vision system while chapter Third Party Libraries provides step by step guidelineing and example codes for the most widely-used comerial vision libaries such as https://net-iam.atlassian.net/wiki/spaces/iam/pages/51511463/Halcon, MIL () and /wiki/spaces/iam/pages/844627987.
In section https://net-iam.atlassian.net/wiki/spaces/iam/pages/96501812/Synview+Smart+App+Example+using+iAMGigEServer you will find a simple software example application while in section https://net-iam.atlassian.net/wiki/pages/resumedraft.action?draftId=79986879 we brefly discribed briefly described how to optimize your own appliction the application code by using hardware acceleration with more advanced examples.
iam ML - Machine Learning Ready
iam ML Version is ideal as a platform for Machine Learning tasks. The integrated hardware acceleration efficiently supports open common neural networks framework such as Caffe, TensorFlow and MXNet. This means that users get a smart vision system that contributes decentrally to the application solution. iam enables them to develop precisely tailored solutions for their vision-based processes from an toplevel perspective.
Section iam ML - Machine Learning ready provides step by step guidelineing and example codes from training- over deploying to - until performing convolutional neural network processing with iam.
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👥 contact NET
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