
IPカメラからのRTSPおよびHLSストリームを、安全な処理パイプラインにインジェストする
エッジまたはクラウドGPU上でオブジェクト検出および追跡アルゴリズムを実行する
定義されたジオフェンス内の運用エリア内で、視覚的な異常を特定する
確認された安全イベント検出時に、REST API経由で自動化されたワークフローをトリガーする
コンプライアンスおよび監査追跡の検証のために、処理されたビデオデータをアーカイブする

Ensure all infrastructure and governance requirements are met before initiating deployment.
Verify bandwidth capacity and QoS settings to support high-resolution video streams without packet loss or latency spikes.
Confirm existing IP camera firmware supports required SDKs and resolution standards for AI model ingestion.
Establish clear ownership, retention schedules, and classification protocols for all video-derived data assets.
Ensure network segmentation isolates analytics traffic from critical operational technology environments.
Document workflows for updating detection models and handling alerts to minimize disruption during rollout.
Secure executive approval for budget allocation, privacy impact assessments, and cross-departmental data sharing agreements.
Map existing camera locations, assess network health, and define specific detection rules aligned with business risk profiles.
Install edge nodes in a controlled zone, tune model sensitivity to reduce false positives, and validate alert accuracy.
Expand deployment across all designated sites, integrate with central security operations center (SOC), and begin automated reporting cycles.
システムは、すべてのカメラからの映像で99%の精度で危険なオブジェクトを特定する
リアルタイム分析は、ビデオフレームキャプチャから2秒以内に完了し、即時のアクションを可能にする
自動アラートは、ピーク時間帯で1%未満に維持され、運用上のノイズを軽減する
Local processing units deployed at camera nodes to minimize latency and bandwidth consumption while maintaining real-time detection capabilities.
Centralized repository for aggregated event logs, model training datasets, and historical analytics required for long-term trend analysis.
Secure RESTful and WebSocket interfaces enabling seamless connectivity with existing ERP, HRMS, and security management systems.
Automated redaction and access control mechanisms ensuring adherence to GDPR, CCPA, and internal data governance policies.
Critical alerts must be processed within 200ms to ensure timely intervention in safety-critical scenarios.
Schedule weekly reviews of alert logs to refine model thresholds and reduce operational noise for security teams.
Implement automatic face blurring for public areas unless specific consent or legal exceptions are triggered by the system.
Plan quarterly model retraining cycles using new data to maintain accuracy as lighting conditions and environments change.