More cameras, more sensors, more intelligence―today’s advanced video surveillance systems do more than ever before to protect people and property, with applications far beyond perimeter monitoring and access control.
However, as a recent IDC white paper points out, putting new surveillance technologies to work quickly gets complex. More devices, more data, and more connections mean more potential security risk and more integration and management challenges.
With widespread digitization, surveillance moves from what was once an essentially self-contained function to one that spans the larger enterprise IT/IoT environment―with implications for infrastructure, security, data management, analytics, operations, software development, and workplace tools.
In many ways, video surveillance via the first IP (Internet Protocol) cameras in the mid-90s was the original IoT use case, where digital cameras collected and centralized information about the physical world. Fast-forward twenty plus years to today. The ecosystem of digital IP cameras has extended outward to a web of interconnected “things” in surveillance, including not only more advanced imaging sensors but also other types of IoT sensors capable of detecting and digitizing information about the physical environment ranging from chemical signatures to temperature to pressure to sound to vibration. The growth of this market is continuing its upwards trajectory. By 2021, IDC predicts that annual shipments of fixed IP/network surveillance cameras will exceed 130 million and mobile surveillance cameras (e.g., drones, vehicles, body wear) will top 73 million.
The ability to combine digital video data with other IoT-sensor surveillance data as well as with other data sources (e.g., employee records, building schematics, campus maps) and powerful analytics (e.g., telemetry, facial recognition, machine learning, artificial intelligence) enables a new kind of computer vision. Security officers gain a more immediate, complete, and accurate picture of situations as they unfold. The likelihood of useful machine-recommended responses grows. And investigators gain digital search and analysis tools that make inquiries into past incidents much faster and easier.
One of the biggest challenges is storing, aggregating, analyzing, and protecting the massive amounts of data generated by a greater number of cameras with higher resolution, multiple modalities, and additional IoT sensors. Security departments are turning to IT organizations for expertise in how best to meet the demands of compute performance, storage, and backend analytics as well as with how to comply with the longer retention periods being set by regulatory bodies and institutional policies. New storage technologies and tiered storage approaches are needed to achieve efficiency and resiliency. And many enterprises are looking to hybrid or private cloud storage, especially for archiving video data, for the flexibility and scalability it offers.
Each IP camera and IoT device in the surveillance network is a potential attack vector, making advanced security methods critical—from software-defined network micro-segmentation to edge compute security to over-the-air updates.
The buildout of advanced surveillance systems presents significant challenges in terms of hardware, software and network integration, deployment and onboarding of new devices over time, and ongoing management. But rather than addressing these challenges at the solution or even application level, organizations should tackle these challenges using a broader enterprise-wide lens—more specifically, by looking at how the solution can be leveraged to help drive future growth and transformation, including:
According to IDC, the best approach to deploying advanced surveillance systems and integrating them into the greater IT environment is with an open, integrated, and holistic platform.
By Frank McCarthy
Published with permission from https://blog.dellemc.com/en-us/