yolox_detector Computer Vision Project

SmartScan

Updated 3 years ago

222

views

19

downloads
Classes (6)
front
heavy_front
heavy_rear
np
np_square
rear
Description

Here are a few use cases for this project:

  1. Traffic Monitoring and Management: The yolox_detector can be used by traffic control centers to analyze real-time traffic situations by recognizing different vehicle classes (np, rear, front, heavy_front, heavy_rear, np_square). This can help in optimizing traffic signal timings, identifying traffic congestion, and developing efficient traffic management strategies.

  2. Parking Space Management: The model can be employed to monitor and manage parking spaces, distinguishing between various types of vehicles like cars, trucks, and buses (np_square). This information can aid in efficient parking space allocation and help with tracking the occupation and availability of parking lots.

  3. Vehicle Classification for Tolls: Toll authorities can use the yolox_detector to automatically identify and classify vehicles based on their vehicle classes, enabling a more efficient toll collection process and eliminating potential manual errors.

  4. Traffic Violation Detection: The yolox_detector can be used to identify vehicles breaking traffic rules, such as entering restricted lanes or crossing red lights. By analyzing images from traffic cameras, law enforcement agencies can automatically generate fines for rule-violating vehicles.

  5. Fleet Management: Companies with large fleets of motor vehicles can use the yolox_detector to better manage their resources by monitoring the types and positions of their vehicles. For example, delivery companies can track heavy_front and heavy_rear vehicles within their fleet, optimizing deliveries and logistics accordingly.

Supervision

Build Computer Vision Applications Faster with Supervision

Visualize and process your model results with our reusable computer vision tools.

Cite This Project

LICENSE
CC BY 4.0

If you use this dataset in a research paper, please cite it using the following BibTeX:

                        @misc{
                            yolox_detector_dataset,
                            title = { yolox_detector Dataset },
                            type = { Open Source Dataset },
                            author = { SmartScan },
                            howpublished = { \url{ https://universe.roboflow.com/smartscan/yolox_detector } },
                            url = { https://universe.roboflow.com/smartscan/yolox_detector },
                            journal = { Roboflow Universe },
                            publisher = { Roboflow },
                            year = { 2022 },
                            month = { apr },
                            note = { visited on 2024-11-08 },
                            }
                        
                    

Similar Projects

See More