A vision system has been developed for automatic quality assessment of robotic cleaning of fish processing lines. The quality assessment is done by detecting residual fish blood on cleaned surfaces. The system is based on classification using convolutional neural networks (CNNs). The performance of different convolutional neural network architectures and parameters is evaluated. The datasets that simulate various conditions in fish processing plants are generated using data augmentation techniques. Tests using further augmented training data to increase the performance of the neural network are performed, which results in a substantial increase in performance both compared to the color thresholding technique and the same neural network arch...
The great potential of the convolutional neural networks (CNNs) provides novel and alternative ways ...
Quality control of Atlantic salmon is currently a task performed manually by human operators. To sta...
CNN composed of 24 convolutional layers and two fully-connected layers. We then trained the CNN with...
High labour costs, due to the existing technology that still involves a high degree of manually base...
We report on the development of a computer vision system that analyses video from CCTV systems insta...
Uses of underwater videos to assess diversity and abundance of fish are being rapidly adopted by mar...
This paper aims to develop the applicability of using Vision System and Neural Networks using a PC-b...
The core of this thesis is the use of Artificial Intelligence for quality inspection purposes. The ...
A system is described to recognize fish species by computer vision and a neural network program. The...
Fish detection, a specific task in computer vision system for fish monitoring, is challenging due to...
Fish killing machines can effectively relieve the workers from the backbreaking labour. Generally, i...
Fish population monitoring systems based on underwater video recording are becoming more popular now...
A generic image learning system, CogniSight®, is being used for the inspection of fishes before fill...
Clean-in-place (CIP) processes are extensively used to clean industrial equipment without the need f...
Raspberries are fruit of great importance for human beings. Their products are segmented by quality....
The great potential of the convolutional neural networks (CNNs) provides novel and alternative ways ...
Quality control of Atlantic salmon is currently a task performed manually by human operators. To sta...
CNN composed of 24 convolutional layers and two fully-connected layers. We then trained the CNN with...
High labour costs, due to the existing technology that still involves a high degree of manually base...
We report on the development of a computer vision system that analyses video from CCTV systems insta...
Uses of underwater videos to assess diversity and abundance of fish are being rapidly adopted by mar...
This paper aims to develop the applicability of using Vision System and Neural Networks using a PC-b...
The core of this thesis is the use of Artificial Intelligence for quality inspection purposes. The ...
A system is described to recognize fish species by computer vision and a neural network program. The...
Fish detection, a specific task in computer vision system for fish monitoring, is challenging due to...
Fish killing machines can effectively relieve the workers from the backbreaking labour. Generally, i...
Fish population monitoring systems based on underwater video recording are becoming more popular now...
A generic image learning system, CogniSight®, is being used for the inspection of fishes before fill...
Clean-in-place (CIP) processes are extensively used to clean industrial equipment without the need f...
Raspberries are fruit of great importance for human beings. Their products are segmented by quality....
The great potential of the convolutional neural networks (CNNs) provides novel and alternative ways ...
Quality control of Atlantic salmon is currently a task performed manually by human operators. To sta...
CNN composed of 24 convolutional layers and two fully-connected layers. We then trained the CNN with...