Overview
Hanwha PND-A7082RV 4MP Indoor AI Dome Camera
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Bundle Summary
Overview
Hanwha PND-A7082RV 4MP Indoor AI Dome Camera
The Hanwha PND-A7082RV is a 4MP AI-enabled indoor vandal dome built for enterprise deployments where edge analytics, low-light clarity, and durable construction take priority. Built on a 1/1.8" CMOS sensor with dual NPU support, this camera delivers real-time object detection and classification without excessive bandwidth overhead. The 2592×1520 native resolution supports frame rates up to 60fps in standard mode, with H.265/H.264 compression ensuring efficient storage and streaming across your network infrastructure.
Key Features
- 4MP Resolution – 2592×1520 native output for detailed forensic review
- Motorized Varifocal Lens – 4.6–9.35mm 2.0x zoom with P-iris and IR correction for adaptive coverage and consistent focus across lighting shifts
- Wide FOV Range – Horizontal 105° (wide) to 47° (tele), enabling both broad area coverage and concentrated identification zones
- 60m IR Night Vision – Reliable low-light detection without reliance on ambient illumination
- Advanced AI Analytics – Person, face, vehicle, and license plate detection; slip-and-fall, social distancing, people counting, queue management, heatmap, vehicle and crowd counting
- Vandal-Resistant Design – IP52 ingress protection and IK10 impact rating for high-traffic and hostile indoor environments
- PoE+ Powered – Single RJ-45 connection for power and data; no separate 12VDC supply required
- Multiple Codec Support – H.265, H.264, and MJPEG for flexible integration and bandwidth optimization
Technical Specifications
- Sensor: 1/1.8" CMOS
- Lens: 4.6–9.35mm motorized varifocal, P-iris, IR corrected
- IR Range: 60m
- Audio I/O: Mic in, line in, line out (selectable)
- Network: RJ-45 10/100/1000BASE-T
- Storage: microSD up to 1TB
- Operating Temperature: –25°C to +50°C
- Durability: IP52 environmental rating, IK10 impact rating
- Dimensions: 160×125mm; Weight: 1550g
- Power: PoE+ only
Ideal Applications
- Retail environments and checkout areas requiring people counting and queue analytics
- Corporate offices, lobbies, and corridors for integrated access control and occupancy tracking
- Parking facilities and garage entries for vehicle detection and license plate capture
- Healthcare and hospitality venues where slip-and-fall detection and social distancing monitoring reduce liability
- High-traffic concourses and transit hubs where crowd density and movement heatmaps inform operational efficiency

The PND-A7082RV succeeds where it matters: edge-based analytics eliminate cloud dependency and reduce bandwidth strain, while the varifocal lens gives operators genuine coverage flexibility. The 120dB wide dynamic range and IR correction ensure consistent image quality through day/night transitions and reflective glass surfaces—critical in retail and office lobbies. Dual NPU processing enables simultaneous multi-class detection (person, vehicle, license plate, anomaly) without frame-rate compromise.
The IK10 vandal rating and robust thermal range (–25°C to +50°C) position this as a workhorse for challenging interior spaces. PoE+ simplification reduces installation labor. The microSD storage option provides local failover, but enterprise deployments should pair this with an NVR or Wisenet management platform for centralized recording and alert orchestration.
System Design, Deployment & Technical Support
Support services and planning resources for commercial surveillance, access control, and infrastructure deployments.
Fixed scope • Fixed price
System Design Assistance
- Get help validating product compatibility
- Coverage requirements
- Storage planning and deployment architecture before you buy.
Deployment & Configuration Support
- Access fixed-scope support for rollout planning
- User setup guidance
- Migration and system standardization across single-site or multi-site deployments
Guides, Tools & Calculators
- PoE requirements
- Storage retention
- Camera selection and deployment methodology