This paper compares the efficiency of state-of-the-art machine learning algorithms used to detect an object in an image. A comparison between a deep learning algorithm such as the VGG-16 and a well-tuned random forest algorithm using classical image analysis parameters is presented. To estimate the efficiency, the classification performances like AUC, precision, recall and computation time of the algorithm retraining process are used. The experimental set-up shows that a well-tuned random forest algorithm is equal to, or better than, the deep learning approach and increases the speed of the retraining process by a factor of around 400
The agriculture sector in the Tangier-Tetouan-Al-Hoceima-Region (Northern Morocco) contributes a sig...
An open problem in robotized agriculture is to detect weeds in dense culture. This problem can be ad...
Deep learning (DL) constitutes a modern technique for image processing, with large potential. Having...
This paper presents the impact of machine learning in precision agriculture. State-of-the art image ...
Machine learning is a learning field that gives computers the ability to learn without explicitly pr...
This paper presents a study of the efficiency of machine learning algorithms applied on an image rec...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Unprecedented progress in the deep learning field influenced many of different industries, including...
Machine learning (ML) refers to the processes that enable computers to think based on variouslearnin...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
Deep learning constitutes a recent, modern technique for image processing and data analysis, with pr...
Ensuring food security is a major challenge in many countries. With a growing global population, the...
To this day, agriculture still remains very important and plays considerable role to support our dai...
This paper presents the performances of machine learning algorithms on aerial images object detectio...
Precision agriculture represents the new age of conventional agriculture. This is made possible by t...
The agriculture sector in the Tangier-Tetouan-Al-Hoceima-Region (Northern Morocco) contributes a sig...
An open problem in robotized agriculture is to detect weeds in dense culture. This problem can be ad...
Deep learning (DL) constitutes a modern technique for image processing, with large potential. Having...
This paper presents the impact of machine learning in precision agriculture. State-of-the art image ...
Machine learning is a learning field that gives computers the ability to learn without explicitly pr...
This paper presents a study of the efficiency of machine learning algorithms applied on an image rec...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Unprecedented progress in the deep learning field influenced many of different industries, including...
Machine learning (ML) refers to the processes that enable computers to think based on variouslearnin...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
Deep learning constitutes a recent, modern technique for image processing and data analysis, with pr...
Ensuring food security is a major challenge in many countries. With a growing global population, the...
To this day, agriculture still remains very important and plays considerable role to support our dai...
This paper presents the performances of machine learning algorithms on aerial images object detectio...
Precision agriculture represents the new age of conventional agriculture. This is made possible by t...
The agriculture sector in the Tangier-Tetouan-Al-Hoceima-Region (Northern Morocco) contributes a sig...
An open problem in robotized agriculture is to detect weeds in dense culture. This problem can be ad...
Deep learning (DL) constitutes a modern technique for image processing, with large potential. Having...