Person with Handphone Detection

Nodeflux Person with Handphone Detection

Nodeflux Person with Handphone Detection addresses instances of mobile phone distraction, promoting improved productivity and safety within monitored environments. This solution integrates advanced Large Vision Models and Visual Transformers directly into the Nodeflux Visionaire platform. The analytics system is capable of automatically detecting individuals using mobile phones in real-time scenarios.

Designed Applications

Nodeflux Person with Handphone Detection is primarily intended for use in law enforcement and surveillance applications. It monitors the occurrence of individuals using mobile phones and aids in mitigating or even preventing potential risks or threats associated with other unforeseen events that may transpire.

Disclaimer: In a sense of large vision models and visual transformers technology, the performance of this analytic might slightly differ in your environment, depending on several variables such as camera specs, camera height, camera angle, weather conditions, etc. We highly recommend you to test our analytics and run benchmarks on your own images, with ground truth or your quality expectations prepared beforehand. Please contact us for more info.

Architecture

Visionaire Person with Handphone Detection utilizes a combination of other services:

  1. Postgres - For database,

  2. Docker Snapshot - For object detection related,

  3. Visionaire Docker Stream (must be v4.57.4 and above) - For video stream processing,

  4. Vanilla Dashboard (Optional) - Built-in dashboard for visualization.

Additional Necessary Deployment (OVOD)

Since Nodeflux Person with Handphone Detection utilizes the snapshot platform, an additional docker-compose.yml file needs to be deployed alongside the other aforementioned services. The following outlines the installation process for deploying the docker-compose.yml file specific to the Open Vocabulary Object Detection (OVOD) pipeline snapshot platform:

Last updated