Algorithms

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Smart In-Vehicle Cameras Increase Driver and Passenger Safety

This article was originally published at John Day's Automotive Electronics News. It is reprinted here with the permission of JHDay Communications. Cameras located in a vehicle's interior, coupled with cost-effective and power-efficient processors, can deliver abundant benefits to drivers and passengers alike. By Brian Dipert Editor-in-Chief Embedded Vision Alliance Tom Wilson Vice President, Business Development […]

Smart In-Vehicle Cameras Increase Driver and Passenger Safety Read More +

nvidia

Accelerate Machine Learning with the cuDNN Deep Neural Network Library

This article was originally published at NVIDIA's developer blog. It is reprinted here with the permission of NVIDIA. By Larry Brown Solution Architect, NVIDIA Machine Learning (ML) has its origins in the field of Artificial Intelligence, which started out decades ago with the lofty goals of creating a computer that could do any work a

Accelerate Machine Learning with the cuDNN Deep Neural Network Library Read More +

Figure2a

Vision-Based Artificial Intelligence Brings Awareness to Surveillance

A version of this article was originally published at EE Times' Embedded.com Design Line. It is reprinted here with the permission of EE Times. Moving beyond the research lab, embedded vision is rapidly augmenting traditional law enforcement techniques in real world surveillance settings. Technological gaps are rapidly being surmounted as automated surveillance systems' various hardware

Vision-Based Artificial Intelligence Brings Awareness to Surveillance Read More +

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Mobile Photography’s Developing Image

A version of this article was originally published at EE Times' Embedded.com Design Line. It is reprinted here with the permission of EE Times. Still photos and videos traditionally taken with standalone cameras are increasingly being captured by camera-inclusive smartphones and tablets instead. And the post-capture processing that traditionally required a high-end computer and took

Mobile Photography’s Developing Image Read More +

“Using Inertial Sensors and Sensor Fusion to Enhance the Capabilities of Embedded Vision Systems,” a Presentation from Sensor Platforms

Kevin Shaw, Chief Technology Officer at Sensor Platforms, delivers the presentation "Using Inertial Sensors and Sensor Fusion to Enhance the Capabilities of Embedded Vision Systems" at the May 2014 Embedded Vision Alliance Member Meeting.

“Using Inertial Sensors and Sensor Fusion to Enhance the Capabilities of Embedded Vision Systems,” a Presentation from Sensor Platforms Read More +

May 2014 Embedded Vision Alliance Member Meeting Presentation: “Designing a Consumer Panoramic Camcorder Using Embedded Vision,” Paul Alioshin, CENTR

Paul Alioshin, Chief Technology Officer at CENTR, delivers the presentation "Designing a Consumer Panoramic Camcorder Using Embedded Vision" at the May 2014 Embedded Vision Alliance Member Meeting. Please note that the audio was intentionally muted between ~6:09 and ~8:52, to address soundtrack copyright concerns.

May 2014 Embedded Vision Alliance Member Meeting Presentation: “Designing a Consumer Panoramic Camcorder Using Embedded Vision,” Paul Alioshin, CENTR Read More +

May 2014 Embedded Vision Summit Technical Presentation: “Implementing Histogram of Oriented Gradients on a Parallel Vision Processor,” Marco Jacobs, videantis

Marco Jacobs, Vice President of Marketing at videantis, presents the "Implementing Histogram of Oriented Gradients on a Parallel Vision Processor" tutorial at the May 2014 Embedded Vision Summit. Object detection in images is one of the core problems in computer vision. The Histogram of Oriented Gradients method (Dalal and Triggs 2005) is a key algorithm

May 2014 Embedded Vision Summit Technical Presentation: “Implementing Histogram of Oriented Gradients on a Parallel Vision Processor,” Marco Jacobs, videantis Read More +

May 2014 Embedded Vision Summit Technical Presentation: “Combining Flexibility and Low-Power in Embedded Vision Subsystems: An Application to Pedestrian Detection,” Bruno Lavigueur, Synopsys

Bruno Lavigueur, Embedded Vision Subsystem Project Leader at Synopsys, presents the "Combining Flexibility and Low-Power in Embedded Vision Subsystems: An Application to Pedestrian Detection" tutorial at the May 2014 Embedded Vision Summit. Lavigueur presents an embedded-mapping and refinement case study of a pedestrian detection application. Starting from a high-level functional description in OpenCV, he decomposes

May 2014 Embedded Vision Summit Technical Presentation: “Combining Flexibility and Low-Power in Embedded Vision Subsystems: An Application to Pedestrian Detection,” Bruno Lavigueur, Synopsys Read More +

May 2014 Embedded Vision Summit Technical Presentation: “Challenges in Object Detection on Embedded Devices,” Adar Paz, CEVA

Adar Paz, Imaging and Computer Vision Team Leader at CEVA, presents the "Challenges in Object Detection on Embedded Devices" tutorial at the May 2014 Embedded Vision Summit. As more products ship with integrated cameras, there is an increased potential for computer vision (CV) to enable innovation. For instance, CV can tackle the "scene understanding" problem

May 2014 Embedded Vision Summit Technical Presentation: “Challenges in Object Detection on Embedded Devices,” Adar Paz, CEVA Read More +

May 2014 Embedded Vision Summit Technical Presentation: “Computer Vision Powered by Heterogeneous System Architecture (HSA),” Harris Gasparakis, AMD

Harris Gasparakis, Ph.D., OpenCV manager at AMD, presents the "Computer Vision Powered by Heterogeneous System Architecture (HSA)" tutorial at the May 2014 Embedded Vision Summit. Gasparakis reviews the HSA vision and its current incarnation though OpenCL 2.0, and discusses its relevance and advantages for Computer Vision applications. HSA unifies CPU cores, GPU compute units, and

May 2014 Embedded Vision Summit Technical Presentation: “Computer Vision Powered by Heterogeneous System Architecture (HSA),” Harris Gasparakis, AMD Read More +

Here you’ll find a wealth of practical technical insights and expert advice to help you bring AI and visual intelligence into your products without flying blind.

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