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Edge AI

AI that decides right on the device.

On-device Real-time Inference

Edge AI doesn't ship every byte to the server — it recognizes and decides right on the user's device or on-site equipment.

AX Lab researches how on-device detection, real-time inference, and lightweight models connect to smart-city, spatial data, and AR interfaces.

On-DeviceReal-TimeQuantization

Section 1

Three conditions are core.

  • 01 On-Device Object Detection

    Detect people, objects, signs, and hazards inside the device, using camera and sensor input. The starting point for field-grade AI that must keep judging even when the network is unstable.

  • 02 Real-Time Edge Inference

    Decisions must arrive without delay — the moment the user moves, the screen changes, or a vehicle or device shifts. For edge inference, response speed is usability and safety.

  • 03 Quantization

    Make models run on constrained hardware. The craft is balancing model size, accuracy, speed, and battery consumption.

Section 2

Extend into AI structures that work on-site.

  • 01 Urban Data Platform × Edge AI

    Research that combines urban data, AR, and on-device AI to connect field-sensed information to service data. Possibility: Quickly judge traffic, facilities, safety, and environment data in the field; connect to city-operations dashboards as smart-city infrastructure.

  • 02 AR HUD / Smart-Glass Recognition

    An interface that places camera-based recognition results on the user's field of view. When recognition and display happen together, edge AI's value becomes clear.

  • 03 On-device Content Review

    Review basic quality, objects, and rule violations on the device at the moment the image or video is generated or captured. Possibility: Automate first-pass review before upload — for creative production, field capture, and product registration — cutting operational cost.

Section 3

Edge AI tags are on-site execution conditions.

  • On-Device

    Decisions inside the device, no server round-trip. On-device content review and field detection do the first-pass judgment locally — cutting network latency and the burden of sending personal data. Related projects: On-device Content Review, Field Object Detection

  • Real-Time

    React to user behavior and on-site conditions instantly. AR HUD / Smart-Glass interfaces fall apart if guidance arrives late. Real-time inference is the core requirement to reflect location, heading, and objects immediately. Related projects: AR HUD / Smart-Glass, Real-time City Guidance

  • Quantization

    Lightweight models that run on small devices. On mobiles, kiosks, and glass devices, model size and power efficiency matter. Quantization is a deployment technique that balances accuracy and speed. Related projects: On-device Inference Optimization, Edge Deployment Pipeline

Timeline

Fast AI works close to the user.

  • Near · Zero-latency recognition

    Interpret user scenes and behavior instantly, without a server round-trip.

  • Next · Field automation

    Capture, inspect, guide, and review — automatically, on-site.

  • Future · Distributed AI infrastructure

    Build service architectures where devices, spaces, and servers share judgment roles.

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