Accelerating Machine Learning Deployment with CEVA Deep Neural Network (CDNN)
Today is an important milestone for CEVA’s Imaging & Vision product line as we are announcing a unique software framework for Deep Learning called CDNN (which stands for CEVA Deep Neural Network). The main idea behind this software framework is to enable easy migration of pre-trained Deep Learning networks into real-time embedded devices and be able to run efficiently and in low power on the CEVA-XM4 Vision DSP. These technologies enable a variety of object recognition and scene recognition algorithms which could be used in the future for applications such as automotive advanced driver assistance systems (ADAS), Artificial intelligence (AI), video analytics, augmented reality (AR) and virtual reality (VR).
Related Semiconductor IP
- AES GCM IP Core
- High Speed Ethernet Quad 10G to 100G PCS
- High Speed Ethernet Gen-2 Quad 100G PCS IP
- High Speed Ethernet 4/2/1-Lane 100G PCS
- High Speed Ethernet 2/4/8-Lane 200G/400G PCS
Related Blogs
- Imagination Technologies' Upgraded GPUs, New Neural Network Core Provide Deep Learning Processing Options
- NVIDIA Previews Open-source Processor Core for Deep Neural Network Inference
- Push-button generation of deep neural networks
- Will the iPhone 8 include a dedicated neural network engine?
Latest Blogs
- Why Choose Hard IP for Embedded FPGA in Aerospace and Defense Applications
- Migrating the CPU IP Development from MIPS to RISC-V Instruction Set Architecture
- Quintauris: Accelerating RISC-V Innovation for next-gen Hardware
- Say Goodbye to Limits and Hello to Freedom of Scalability in the MIPS P8700
- Why is Hard IP a Better Solution for Embedded FPGA (eFPGA) Technology?