
Beijing Zhuoshi Zhitong Technology
AI-powered traffic video analysis and digital twin solutions.
Date | Investors | Amount | Round |
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N/A | €0.0 | round | |
investor investor | €0.0 | round | |
investor investor | €0.0 | round | |
* | CNY20.0m | Early VC | |
Total Funding | 000k |
Beijing Zhuoshi Zhitong Technology (Sinoits) is a technology company specializing in computer vision and digital twin solutions for the transportation and security sectors. Founded in 2012, the company focuses on the research and development of AI-driven technologies, including vehicle and pedestrian recognition, traffic scene analysis, and big data applications.
The company's business model involves providing algorithm authorization, software platforms, and integrated software-hardware products. These offerings are designed to provide digital traffic management tools for road operators and regulatory bodies. Its product suite includes an AI multi-modal large model, video and image structuralization systems, edge computing units, and intelligent hardware like AI-powered cameras and safety helmets. These products have been applied in various areas such as intelligent expressways, urban traffic management, vehicle-road collaboration (V2X), and logistics. The company's systems have been deployed in over 20 provinces and cities.
Sinoits has received multiple rounds of funding, with investors including Tencent, Qualcomm Ventures, and a strategic investment from CCCC Capital (China Communications Construction Company Limited Capital). The core team includes individuals with prior experience at companies like Alibaba, Baidu, and Microsoft.
Keywords: computer vision, digital twin, traffic management, artificial intelligence, video analytics, vehicle recognition, smart transportation, pedestrian recognition, vehicle-road collaboration, intelligent expressways, big data analytics, edge computing, traffic safety, AI solutions, transportation technology, scene recognition, logistics optimization, smart city infrastructure, V2X technology, video structuralization