Object detection and classification in the water enhances not only the application of the autonomous underwater vehicle(AUV) but also localization of the AUV. Object detection and classification using sonar images are challenging problems due to low resolution and low signal-to-noise ratio. In this paper, we propose shape classification method using multi-view sonar images for AUV. To train multi-view of sonar images, we used network which is connected in parallel with convolutional neural network(CNN). We used Alex-net for the basic CNN model. The extracted features by the CNN are collected through the pooling layer and connected to the fully connected layer to classify the shape. To overcome the lack of training data, sonar simulator was ...
Recent advancements in deep learning offer an effective approach for the study in machine vision usi...
How to accurately and fast classification obstacle is the key of real-time obstacle avoidance and av...
Artificial reef detection in multibeam sonar images is an important measure for the monitoring and a...
Forward Looking Sonars (FLS) are a typical choiceof sonar for autonomous underwater vehicles. They a...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
Underwater target recognition is one core technology of underwater unmanned detection. To improve th...
This paper presents an image matching algorithm based on convolutional neural network (CNN) to aid i...
Underwater object detection in sonar images requires a large number of images of target objects. For...
This paper proposes a method that synthesizes realistic sonar images using a Generative Adversarial ...
To solve the problem of sonar image recognition, a sonar image recognition method based on fine-tune...
Underwater object recognition based on deployed mobile nodes (underwater vehicles) is difficult, bec...
Object detection is one of necessary techniques for autonomous underwater vehicles (AUVs) to automat...
This paper proposes a method to estimate the underwater target object's yaw angle using a sonar...
In order to improve the accuracy of underwater object classification, according to the characteristi...
Recent advancements in deep learning offer an effective approach for the study in machine vision usi...
How to accurately and fast classification obstacle is the key of real-time obstacle avoidance and av...
Artificial reef detection in multibeam sonar images is an important measure for the monitoring and a...
Forward Looking Sonars (FLS) are a typical choiceof sonar for autonomous underwater vehicles. They a...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
This paper proposes a method to detect underwater objects using sonar image simulator and convolutio...
Underwater target recognition is one core technology of underwater unmanned detection. To improve th...
This paper presents an image matching algorithm based on convolutional neural network (CNN) to aid i...
Underwater object detection in sonar images requires a large number of images of target objects. For...
This paper proposes a method that synthesizes realistic sonar images using a Generative Adversarial ...
To solve the problem of sonar image recognition, a sonar image recognition method based on fine-tune...
Underwater object recognition based on deployed mobile nodes (underwater vehicles) is difficult, bec...
Object detection is one of necessary techniques for autonomous underwater vehicles (AUVs) to automat...
This paper proposes a method to estimate the underwater target object's yaw angle using a sonar...
In order to improve the accuracy of underwater object classification, according to the characteristi...
Recent advancements in deep learning offer an effective approach for the study in machine vision usi...
How to accurately and fast classification obstacle is the key of real-time obstacle avoidance and av...
Artificial reef detection in multibeam sonar images is an important measure for the monitoring and a...