With the recent advancement of deep learning, the performance of object detection techniques has greatly increased in both speed and accuracy. This has made it possible to run highly accurate object detection with real time speed on modern desktop computer systems. Recently, there has been a growing interest in developing smaller and faster deep neural network architectures suited for embedded devices. This thesis explores the suitability of running object detection on the Raspberry Pi 3, a popular embedded computer board. Two controlled experiments are conducted where two state of the art object detection models SSD and YOLO are tested in how they perform in accuracy and speed. The results show that the SSD model slightly outperforms YOLO ...
Mobile robots and many edge AI devices have a need to trade off computational power against power co...
Object detection is an important task for many applications, like transportation, security, and medi...
This thesis deals with the implementation of inference model, based on the methods of deep learning,...
With the recent advancement of deep learning, the performance of object detection techniques has gre...
Melon requires intensive treatment with a high cost of maintenance. Digital image processing with de...
The performance of neural networks is one of the most important topics in the field of computer visi...
Edge AI is a growing area. The use of deep learning on low cost machines, such as the Raspberry Pi, ...
Object detection is an essential capability for performing complex tasks in robotic applications. To...
In this thesis, various famous models have been investigated and compared to a custom model for peop...
This paper deals with the new trend of algorithm development in embedded systems, more specifically,...
Object detection is a crucial task in computer vision with a wide range of applications. However, de...
This study aims to increase the processing time of detecting non-rice objects based on the you only ...
In the 5G intelligent edge scenario, more and more accelerator-based single-board computers (SBCs) w...
Työn tavoitteena oli tutkia eri olemassa olevien reunalaskentalaitteiden suorituskykyä huippuluokan ...
Implementacija detektora za detektiranje najvažnijih sudionika i predmeta prometa u sustave za auton...
Mobile robots and many edge AI devices have a need to trade off computational power against power co...
Object detection is an important task for many applications, like transportation, security, and medi...
This thesis deals with the implementation of inference model, based on the methods of deep learning,...
With the recent advancement of deep learning, the performance of object detection techniques has gre...
Melon requires intensive treatment with a high cost of maintenance. Digital image processing with de...
The performance of neural networks is one of the most important topics in the field of computer visi...
Edge AI is a growing area. The use of deep learning on low cost machines, such as the Raspberry Pi, ...
Object detection is an essential capability for performing complex tasks in robotic applications. To...
In this thesis, various famous models have been investigated and compared to a custom model for peop...
This paper deals with the new trend of algorithm development in embedded systems, more specifically,...
Object detection is a crucial task in computer vision with a wide range of applications. However, de...
This study aims to increase the processing time of detecting non-rice objects based on the you only ...
In the 5G intelligent edge scenario, more and more accelerator-based single-board computers (SBCs) w...
Työn tavoitteena oli tutkia eri olemassa olevien reunalaskentalaitteiden suorituskykyä huippuluokan ...
Implementacija detektora za detektiranje najvažnijih sudionika i predmeta prometa u sustave za auton...
Mobile robots and many edge AI devices have a need to trade off computational power against power co...
Object detection is an important task for many applications, like transportation, security, and medi...
This thesis deals with the implementation of inference model, based on the methods of deep learning,...