Abstract

In order to realize the intelligent reimbursement and financial information management of large and medium-sized state-owned enterprises and improve the financial information network management and information level of large and medium-sized state-owned enterprises, an enterprise intelligent reimbursement system based on OCR technology and support vector machine (SVM) algorithm is proposed. The system design is divided into general structure design, algorithm design of intelligent reimbursement and financial information management of large and medium-sized state-owned enterprises, and software development design. Information retrieval of intelligent reimbursement and financial information management of large and medium-sized state-owned enterprises is carried out by using financial accounting operation and maintenance information extraction method, and financial accounting operation and maintenance correlation feature quantity of financial information of large and medium-sized state-owned enterprises is extracted, and similarity feature analysis model of intelligent reimbursement and financial information management of large and medium-sized state-owned enterprises is constructed. The OCR technology and SVM algorithm are used to realize the network modular design of accounting management and intelligent reimbursement of large and medium-sized state-owned enterprises and the networking control design of Internet of Things. RFID radio frequency tags are used to identify the two-dimensional code tags of financial information of large and medium-sized state-owned enterprises. The software development and network modular design under OCR technology and SVM algorithm are used to realize accounting management and intelligent reimbursement of large and medium-sized state-owned enterprises. Tests show that the designed intelligent reimbursement system for large and medium-sized state-owned enterprises has good output stability, and the enterprise accounting management and intelligent reimbursement informationization level is high.

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