Fast object tracking on embedded devices is of great importance for applications such as autonomous driving, unmanned aerial vehicle, and intelligent monitoring. Whereas, most of previous general solutions failed to reach this goal due to the facts that (i) high computational complexity and heterogeneous operation steps in the tracking models and (ii) parallelism-limited and bloated hardware platforms (e.g., CPU/GPU). Although previously proposed devices leverage neural dynamics and near-data processing for efficient tracking, their flexibility is limited due to the tight integration with vision sensor and the effectiveness on various video datasets is yet to be fully demonstrated. On the other side, recently the many-core architecture with...
We present a fully event-driven vision and processing system for selective attention and tracking, r...
We present a fully event-driven vision and processing system for selective attention and tracking im...
Abstract(#br)In recent years, deep learning based visual tracking methods have obtained great succes...
Using programmable system-on-chip to implement computer vision functions poses many challenges due t...
Visual object tracking is one of the most fundamental research topics in computer vision that aims ...
Feature extraction and representation is one of the most important components for fast, accurate, an...
For self-driving vehicles, aerial drones, and autonomous robots to be successfully deployed in the r...
With the rapid development of deep learning techniques, new breakthroughs have been made in deep lea...
Recently, an upsurge of deep learning has provided a new direction for the field of computer vision ...
Compute and memory demands of state-of-the-art deep learning methods are still a shortcoming that ...
This paper proposes a fast multi-domain convolutional neural networks method(Fast MDNet) for visual ...
Real-time visual object tracking provides every object of interest with a unique identity and a traj...
Object tracking plays an important role in many applications, such as video surveillance, human-comp...
In this work, we perform analysis of detection and counting of cars using a low-power IBM TrueNorth ...
Recently, we have seen a rapid development of Deep Neural Network (DNN) based visual tracking soluti...
We present a fully event-driven vision and processing system for selective attention and tracking, r...
We present a fully event-driven vision and processing system for selective attention and tracking im...
Abstract(#br)In recent years, deep learning based visual tracking methods have obtained great succes...
Using programmable system-on-chip to implement computer vision functions poses many challenges due t...
Visual object tracking is one of the most fundamental research topics in computer vision that aims ...
Feature extraction and representation is one of the most important components for fast, accurate, an...
For self-driving vehicles, aerial drones, and autonomous robots to be successfully deployed in the r...
With the rapid development of deep learning techniques, new breakthroughs have been made in deep lea...
Recently, an upsurge of deep learning has provided a new direction for the field of computer vision ...
Compute and memory demands of state-of-the-art deep learning methods are still a shortcoming that ...
This paper proposes a fast multi-domain convolutional neural networks method(Fast MDNet) for visual ...
Real-time visual object tracking provides every object of interest with a unique identity and a traj...
Object tracking plays an important role in many applications, such as video surveillance, human-comp...
In this work, we perform analysis of detection and counting of cars using a low-power IBM TrueNorth ...
Recently, we have seen a rapid development of Deep Neural Network (DNN) based visual tracking soluti...
We present a fully event-driven vision and processing system for selective attention and tracking, r...
We present a fully event-driven vision and processing system for selective attention and tracking im...
Abstract(#br)In recent years, deep learning based visual tracking methods have obtained great succes...