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            Galileo series AI vision software solution

            Galileo series software

            Based on the application scenarios of fast deep learning technology in industrial vision and industrial defect detection, we launched "Galileo" series of software products.This series of products will be "AI deep learning algorithm, model training, model testing, online detection and analysis, data analysis report, automatic generation of defects, cloud deep learning service, AI customized algorithm" and other one-stop implementation.Different functional modules and different products can be selected according to the different needs of customers' actual use scenarios

            Deep learning system

            Cloud platform for industrial visual

            Online detection and big data system

            Defect sample management system

            Software testing process
            Introduction of software

            Deep learning system:Galileo-X

            Core functions: modeling, annotation, training, verification, detection, feedback, additional training, reporting

            GalileoX independent research and development in both China and the United States is a deep innovation team, fully independent intellectual property rights, based on the technology of "rapid deep learning" industrial visual identification system, using the deep learning technology in industrial visual identification detection, classification, location, OCR scene demand one-stop complete solution, and greatly reduce maintenance difficulty and cost in the late algorithm。


            Online detection system:Galileo-T

            Core functions: data statistics, back check, analysis, reporting, decision support/marking overkill, omission/feedback training

            Online detection:The product is designed for the real-time operation and detection of the production line. It serves the front end of the industrial testing equipment and directly faces the equipment operator, providing great convenience for the production line detection work。

            Function and extensibility:The integration of detection module, defect re-filtering module and data sample feedback module enables perfect docking with GALILEO-X or similar platforms, as well as all operation and control systems, industrial control systems and equipment on the market。

            Free custom:According to products to independent standards and forms are more flexible。

            Production line testingOriginLab OriginProFreedom to buildInfinite compatible

            Big data aided decision making system:Galileo - T

            GalileoT Big data aided decision making system is mainly used in the big data analysis of industrial product defect detection, which can more comprehensive and efficient statistics and management of production and testing data 。

            Product testing data plays a crucial role in the quality of product production and shipment. In a large number of fragmented data, it is difficult to locate the connection status of each link. Therefore, the big data decision system was born. It is designed to solve the problem of isolated data information of production line, summarize and analyze the test data of all production lines and all links of the factory, and give real-time alarm to abnormal data to improve product quality and reduce unnecessary losses 。

            Big Data AnalysisAid Decision MakingTotal Data SummaryReal-time exception warning


            Defect sample management system:Galileo-D

            Core functions: Defect library classification, defect generation, new sample generation, data invocation, training, testing

            Specially designed for auxiliary sample collection and defect labeling, it reduces more than 80% manual operation and 90% sample collection time, thus realizing the "no sample training model" in a real sense. 。

            Huge count of sampleSeamless matchFree call

            Product Advantage
            • Productiz covenant-lite

              Designed for local production enterprises, very simple production line workers maintenance interface

            • High efficiency

              Fast modeling and labeling, saving 80% of the time;Customization greatly improves the detection speed

            • High speed neural network

              Self-research core technology,optimized neural network,model accelerates over 30~50 times

            • High accuracy

              Through addition and feedback training, the detection accuracy is close to 100%

            • Whole process inspection

              Constructing four whole process testing system, the industrial application is more extensive

            • Support for complex images

              Sensitive detection under complexity background, beyond the existing traditional image analysis, detection technology

            • Cross-platform Compatibility

              The new framework of deep learning can be docked and transplanted to any software and hardware platform

            • Visual report

              Support the output of custom, visual test and detection reports

            • Over 2 billion sample bases

              More than 2 billion samples of industrial production defects

            • Setting standards flexibly

              Adjust positive and negative samples according to production requirements, conduct optimization training

            • Online quality inspection

              Multi-equipment on-line quality inspection big data analysis, to provide reliable decision aid for industrial production

            • MES System

              Docking MES system

            Some application cases

            2.5D / 3D Phone Cover Glass

            Surface detection

            Speed:≤ 2.3s/pc

            Result:Loss ≤ 2.5% | Fault ≤ 10%

            Type:Smudge, hair, dust spot, scratch, edge collapse, bump, deep scratch......

            Defect Type:deep scratch
            • master map

            • result

            Metallized Ceramics

            Surface detection

            Speed:≤ 100ms/pc

            Result:Loss ≤ 0.3% | Fault ≤ 1%

            Type:Scratches, chipped edges, smudges, cracks, scratches, missing......

            Defect Type:scratch
            • master map

            • result

            Metallic Part

            Surface detection

            Speed:≤ 500ms/pc

            Result:Loss ≤ 0.1% | Fault ≤ 5%

            Type:Smudge, bright mark, scratch, spot, mold, knife grain, notch......

            • master map

            • result

            Industrial character recognition

            Surface detection

            Speed:≤ 120ms/pc

            Result:Precision rate ≥ 99.99%

            Defect Type:Capital
            • master map

            • result

            Electronic Components

            Surface detection

            Speed:≤ 2ms/pc

            Result:Loss ≤ 0.01% | Fault ≤ 1%

            Type:Magnetic leakage,bubbles,cracking,deformation,black,crack,crescent,trachoma,indentation......

            Defect Type:End of bad
            • master map

            • result

            Pouch power cell

            Surface detection

            Speed:≤ 5s/pc

            Result:Loss ≤ 0.1%(serious defects is 0) | Fault ≤ 5%

            Type:Polar piece folding, breakage, leakage, edge sealing foreign body,convex, pinhole......

            Defect Type:Sealing foreign body
            • master map

            • result

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