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| Challenges in large-scale AIoT Deployment in Smart Transportation |
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Limited Range and Susceptibility to Interference:
Standard Wi-Fi networks have short ranges and are prone to interference, leading to unstable data transmission. |
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High Power Consumption:
Both standard Wi-Fi and computing systems consume significant power, complicating edge deployment. |
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Increased Costs:
Extensive cabling or reliance on 4G/5G networks for intersections increases operational expenses. |
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Weather and Environmental Impact:
Adverse weather and angled license plates reduce recognition accuracy, affecting system reliability. |
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| Smart Transportation • Scalable AI Vision Solutions |
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Aetina Corporation, in partnership with eTarget and ALFA Network, has developed a comprehensive AI Visual Recognition Solution. This innovative solution leverages Aetina's powerful edge AI Inference systems, powered by NVIDIA Jetson, to execute advanced AI algorithms. Integrated with Wi-Fi HaLow technology, it enables data transmission over an impressive 2-kilometer range. Notably, both Aetina's AI inference systems and Wi-Fi HaLow are designed with low power consumption in mind, making this solution ideally suited for large-scale deployments.
This cutting-edge solution has already been successfully implemented in numerous smart transportation projects undertaken by government agencies. In a typical application, images of license plates are captured by roadside cameras and transmitted in real-time via low-power Wi-Fi HaLow to a central control center within a 2-kilometer radius. Aetina's edge AI inference systems, including the AIE-PX11/12/21/22 models, are powered by advanced AI vision algorithms. These algorithms ensure 99% accuracy in image analysis and deliver valuable insights. This versatile solution has proven to be highly effective in a wide range of applications, including traffic control, violation detection, and crime tracking. |
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Features |
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20x Longer Data Transmission:
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Lower Power Consumption for Edge Computing: Paired with the energy-efficient Wi-Fi HaLow system, Aetina’s low-power fanless edge AI computing system offers easy maintenance and is ideal for outdoor deployments. |
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The Highly Scalability of Wi-Fi HaLow: The wireless network solution eliminates the need for complex and costly cabling, or the monthly fees associated with 4G/5G carriers. Wi-Fi HaLow can connect up to 256 points! |
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99% High-Precision Algorithm: Accurate and real-time AI visual recognition, with a recognition angle of up to 60 degrees, enables the recognition of skewed license plates and promotes more effective and efficient decision-making. |
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Benefits |
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Cost-Effectiveness: No SIM cards, no contracts, and no monthly fees. |
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Low Power Consumption, Unlimited Data: Enables real-time image transmission to the control center for AI analysis. |
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Comprehensive Solution: Reduces integration costs, speeds up deployment, and lowers maintenance costs. |
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Reduced Manual Verification: 99% accuracy in recognition rate lowers the costs for operations and maintenance. |
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| The Core of the Solution: AI Inference |
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Aetina’s Fanless System: AIE-PX11/12/21/22
Supports NVIDIA Jetson™ AGX Orin™ 32GB/64GB module |
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Aetina’s Fanless System: AIE-PO22/32 | AIE-PN32/42
Supports NVIDIA Jetson™ Orin™ NX and Orin Nano™ module |
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- 2/4 x IEEE 802.3af GbE PSE ports
- 1 x GbE, 1 x 10GbE port, 1 x M.2 B-Key, 1 x M.2 E-Key, and 1 x M.2 M-Key slot
- Wide input voltage range from 9 to 36 VDC
- Operating Temperature -25°C ~ +55°C
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- 1 x M.2 B-Key, 1 x M.2 E-Key, 1 x M.2 M-Key (128GB built-in)
- 2 x RJ-45 GbE ports
- Wide input voltage range from 12 to 24 VDC
- Operating temperature -25°C ~ +55°C
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| More Applications of AI Visual Recognition Solution |
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| Smart Parking |
Smart Port |
Smart Construction & Safety |
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| Want to know more about our AI Visual Recognition Solution? |
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