Thursday, December 27, 2018

RidgeRun's Sony IMX219 CMOS Image Sensor Linux Driver for NVidia Jetson Xavier and Jetson TX1/TX2

This blog highlights the RidgeRun support for Jetson Xavier and Jetson Tegra platform on developing a CMOS Image Sensor Linux Driver for Sony IMX219.

Driver Features:

  • L4T 31.1 and Jetpack 4.1
  • V4l2 Media controller driver
  • One camera capturing (TODO: to expand to 6 cameras)
  • Tested resolution 3280 x 2464 @ 15 fps
  • Tested resolution 720p @ 78 fps
  • Tested resolution 1640x1232 @ 30 fps
  • Tested resolution 820x616 @ 30 fps
  • Tested with J20 Auvidea board.
  • Capture with v4l2src and also with nvarguscamerasrc using the ISP.
Images attached here are taken during the developing driver for Sony IMX219 image sensor, testing various image capture and display options, performance and latency measurement in our R&D lab located in CostaRica. Various tests are carried out using GStreamer pipelines. 

Enabling and building the driver with Auvidea J20 Expansion board, Example GStreamer pipelines, Performance, Latency measurement details are shared in the RidgeRun developer wiki's mentioned at the end of this blog.

RidgeRun's Sony IMX219 Linux driver for Jetson Xavier

Output image of the IMX219 camera sensor image capture @1640x1232 resolution with nvcamerasrc GStreamer element for the Jetson Xavier platform:




RidgeRun's Sony IMX219 Linux driver latency measurements on Jetson Xavier

Frames showing how the glass to glass latency measurement method is setup by our team while testing for image capture using IMX219 camera mode at 3280x2464@16fps resolution for Xavier platform.


Glass to glass latency measured is 215 ms (07:772 minus 07:557).Time readings can be seen in the displays.

RidgeRun's Sony IMX219 Linux driver for Jetson TX1

Image below is showing the IMX219 capture @1640x1232 resolution with nvcamerasrc on the Jetson TX1 platform. Camera aimed at computer monitor on the left which is reflecting the wall and ceiling shown on the right:



RidgeRun's Sony IMX219 Linux driver latency measurements on Jetson TX1

Image below is captured while measuring the Jetson TX1 glass to glass latency for 1080p 30fps IMX219 camera mode:


Glass to glass latency measured is 130 ms ((13.586 minus 13.456).Time readings can be seen in the displays.

You can find more information about the driver in these developer wiki's from RidgeRun : 


For technical information, please email to us at support@ridgerun.com or for purchase related questions post your inquiry at our Contact Us page.

Wednesday, December 26, 2018

RidgeRun's USB Video Class Gadget Library - LibGUVC v1.4.0 - NVidia Xavier and NXP iMX Support

The UVC Video Class Gadget Library or libguvc for short is a platform agnostic library that simplifies the development of UVC based gadget devices by encapsulating the most of the UVC communication leaving just the basic setup to the user. The USB video class gadget runs on top of the UVC function driver in the user space and takes care of the communication between the user application and the linux driver stack.

Release of libGUVC v1.4.0, is now supporting NVIDIA Jetson platform along with previously supported NXP-iMX6 family of processors, thanks to the new bulk transfer support.

It has never been easier to implement a UVC application on your hardware, libGUVC make it easy to interact with the UVC driver and expose a variety of useful features such as:

  •     USB 2.0 and USB 3.0 support
  •     Isochronous and bulk endpoint support
  •     YUV2, MJPEG and H264 video streaming support
  •     Extension Unit support
  •     MMAP and UserPtr support.

Since the driver is agnostic to the platform, you can run it on almost any platform with quality USB and UVC drivers, making it really simple to convert it into a UVC capable device.

 libGuvc in action - Running libGuvc on NVidia Xavier

 


 libGuvc in action - Running libGuvc on NXP-iMX6

 

You can find more information about the library in this developer wiki from RidgeRun Engineering : USB Video Class Gadget Library - libguvc

For more technical information please contact us at support@ridgerun.com. Please post your inquiry at our Contact Us page for purchase related questions and also since the libguvc is platform agnostic, you can request for a custom demo image for any other platform using this link.





Wednesday, December 12, 2018

RidgeRun supporting The 2019 FIRST® Robotics by providing NVIDIA Jetson support

RidgeRun love helping academic projects! RidgeRun is proud to help the teams on FIRST Robotics Competition [1] with software for embedded systems to improve the acquisition, processing and analysis of Audio and Video signals!

[1] https://www.firstinspires.org/robotics/frc

Michael, Amanda, and Emily (in the pic below) of FIRST Robotics Competition Team 102, The Gearheads, from Somerville High School in NJ, investigate the NVIDIA Jetson technology from RidgeRun.  They hope that the combination of Nvidia TX1, Auvidea J90LC, and drivers from RidgeRun will provide a cost effective, state of the art Computer Vision solution for the 2019 season. Go Gearheads!


RidgeRun help getting the kernel built with the IMX219 V4L2 driver for TX1 on the Auvidea J90-LC for state of the art Computer Vision solution for The 2019 FIRST® 2019 season.

Watch out! and we will keep updating as the Competition progress.

For more information please contact us at support@ridgerun.com or for purchase related questions post your inquiry at our Contact Us page.


Monday, December 10, 2018

RidgeRun - NVIDIA Xavier - Deep Learning Tutorials using Jetson Inference

Jetson-inference is a training guide for inference on the TX1 and TX2 using NVIDIA Deep Learning GPU Training System (DIGITS)

This blog details the summary of original Jetson-inference training from NVIDIA with a focus on inference part.

You can learn about following details in this developer wiki from RIdgeRun Engineering : NVIDIA Xavier - Deep Learning - Deep Learning Tutorials - Jetson Inference

Building jetson-inference.

Classifying Images with ImageNet.

Locating Object Coordinates using DetectNet.

Image Segmentation with SegNet.

and run a Live Demo.

With jetson-inference you can deploy deep learning examples on the NVIDIA Xavier in a matter of minutes. An example application is shown below.

The input is an image and it outputs the most likely class and the probability that the image belongs to that class using ImageNet classification network. ImageNet is a classification network trained with a database of 1000 objects.


Fig1: imagenet-console output image

It detects the image as 'Boston bull, Boston terrier' with imagenet class id of 0195 at 96.305% classification accuracy. Image recognition networks output a class probabilities corresponding to the entire input image.

Detection networks, on the other hand, find where in the image those objects are located. DetectNet accepts an input image, and outputs the class and coordinates of the detected bounding boxes.


                            Fig2: detectnet-console output image using coco-dog pretrained model


If you are new to the Xavier or planning on getting one, please visit our Jetson Xavier Wiki page.

Article related : 

Read this blog on deep reinforcement learning Deep Reinforcement Learning on the Jetson Xavier

For more information please contact us at support@ridgerun.com