Human resources and consumers are critical assets of a company across every vertical, and efficiently managing them may have a direct impact on organizational productivity. Tasks like monitoring staff leave requests and attendance, manual tracking of surveillance systems of stores, lanes, are intensively coupled with organization-wide resources and hence, add substantial slack in the system in the form of extra man-hours logged, time invested, reduced revenue per person, cross-process dependencies on labor and even fraudulent activities arising due to these loopholes. For clarity, an instance of shoplifting might evade live monitoring and will only be revealed when the surveillance videos are viewed.
Moreover, traditional technological solutions lack a unified interface which might give rise to consistent switching between applications deployed in silos. In this blog, we will have a look at how artificial intelligence and machine learning-based mobile solutions can help organizations reduce significant trade-off costs arising due to the absence of streamlined surveillance monitoring and automated tracking of staff attendance.
Let us begin by understanding the basics of AI/ML-based video surveillance and attendance systems :
How does AI/ML-based surveillance work on a mobile solution?
Artificial intelligence-based mobile solutions for surveillance uses a software program that looks at the media files from surveillance cameras to identify humans, objects, vehicles or events. The A.I. program functions by using machine vision. The vision works on a series of rules set by developers and a repository of stored reference images of humans, objects, their postures, color, speed, angles, positions, etc. The A.I. asks itself if the observed object or human activity is unusual or is analogous with a pre-existing set of activities. An alert is then sent accordingly through mobile to the respective authority.
These algorithms can also help identify non-human objects responsible for hacks on websites. Besides the minimal rules for objects or entities, complex rules can also be set. For example, to monitor social distancing norms, these AI systems can help detect highly saturated areas with people and alert the authorities. The software that houses the program can be set up in a mobile app that receives the input from the cameras.
Use cases of AI/ML-based custom surveillance and attendance app
Employee management
Store management
Government initiatives
Schools and Institutions
Hospitals and healthcare institutions
A custom app solution for an AI based system can be composed of a dashboard with the primary information in the form of visuals or stats that a stakeholder or a business requires. For instance, for brand surveillance, a brand app can have separate dashboards for inventory managers to monitor raw materials, for store managers to oversee shoplifting, access information on staff time off and logged in hours.
A notification system will be essential for instigating appropriate in-time response to an event or a mishap.
This becomes one of the primary features of your app that helps validate the biometrics of a person/object with a database of authorised people.
This module will account for automatic generation of attendance/material/customer data reports in the format of your choice like CSV or Excel, among others.
Artificial intelligence technology possesses far more superior and error-free capabilities than humans to monitor multiple cameras simultaneously, spotting and identifying a trespassing entity or object, recognizing people from a database etc. Mobile solutions make it much more accessible and implementable in areas that are deemed expensive and complex.
Moreover, with a customized set of requirements that cater to your exact processes, there is no dearth of cost-savings that can be attained through automating tasks and freeing up resources for other profitable business areas. To proceed, get in touch with a reputable AI in security and surveillance services company.