TF-YOLO: An Improved Incremental Network for Real-Time Object Detection
TF-YOLO: An Improved Incremental Network for Real-Time Object Detection
Blog Article
In recent years, significant advances have been gained in visual detection, and an abundance of outstanding models have been proposed.However, state-of-the-art object detection networks have some inefficiencies in detecting small targets.They commonly fail to run on portable devices or embedded systems el reformador tequila anejo due to their high complexity.
In this workpaper, a real-time object detection model, termed as Tiny Fast You Only Look Once (TF-YOLO), is developed to implement in an embedded system.Firstly, the k-means++ algorithm is applied to cluster the dataset, which contributes to more excellent priori boxes of the targets.Secondly, inspired by the multi-scale prediction idea in the Feature Pyramid Networks (FPN) algorithm, the framework in YOLOv3 is effectively improved and optimized, by ribavirin coupon three scales to detect the earlier extracted features.
In this way, the modified network is sensitive for small targets.Experimental results demonstrate that the proposed TF-YOLO method is a smaller, faster and more efficient network model increasing the performance of end-to-end training and real-time object detection for a variety of devices.