Development of a pattern detection and classification system based on ML

Sartak aggarwal

Abstract


In this study, we discuss the implementation of a pattern recognition system with many steps. Pattern recognition is critical in many domains, including video surveillance, biometrics, interactive gaming applications, human-computer interaction, and access control systems. These systems necessitate rapid real-time detection and identification with a high recognition rate. In this work, we present a pattern recognition system implementation. We use picture preprocessing and neural networks to improve the system's recognition rate.

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References


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