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To solve these issues, this paper proposes a moving object detection model that integrates conditional information and feature deepening techniques. First, a multiframe averaging method is designed to derive a clean background model, which serves as a conditional input to guide network optimization with accurate scene information. Then, an autoencoder architecture is constructed by combining multiple small encoders and residual connections, enhancing feature propagation while mitigating detail degradation caused by generative oversampling. Next, a multiscale feature refinement module is devised to further explore the rich semantic information in the deep feature, thereby enhancing the feature representation capability of the network. 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