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    一种基于DS论据光电域智能化目标检测识别技术

    An Intelligent Target Detection and Recognition Technology Based on DS Evidence Theory and Information Fusion in the Optical-Electronic Domain

    • 摘要: 针对目标在视场中像素占比差异显著而导致的检测识别难题,构建了一种基于Dempster-Shafer(DS)证据理论的光电智能感知框架。该技术方案实施路径主要分为两步:首先,建立多维度并行检测机制,对单帧影像同时执行四种算法,包括基于先验知识与深度学习的小目标探测、大尺度目标识别以及细粒度识别,从而全方位捕获目标的时空位置与属性特征;随后,引入DS证据理论作为决策级融合策略,对上述多源的检测证据进行综合推断,最终输出高置信度的综合识别结果。经仿真实验,该检测识别技术检测概率为98.5%,虚警概率为1.8%,粗分类准确率为98%,有效满足光电设备的使用需求。该技术方案对系统性解决光电设备检测识别功能具有较高的实用价值和广泛的参考意义。

       

      Abstract: To address the challenges in detection and recognition arising from significant variations in target pixel occupancy within the field of view, an optoelectronic intelligent perception framework based on Dempster-Shafer (DS) evidence theory is proposed in this paper. The implementation of this framework proceeds in two primary stages. First, a multi-dimensional parallel detection mechanism is established to simultaneously execute four heterogeneous algorithms on single-frame imagery. These algorithms encompass prior-knowledge-based and deep-learning-based detection for small targets, large-scale target confirmation, and fine-grained classification, thereby comprehensively capturing the spatiotemporal positions and attribute features of the targets. Subsequently, DS evidence theory is employed as a decision-level fusion strategy to synthesize the aforementioned multi-source heterogeneous evidence, ultimately yielding high-confidence integrated recognition results. Simulation results demonstrate that the target detection and recognition technology achieves a detection probability of 98.5%, a false alarm rate of 1.8%, and a coarse-level classification accuracy of 98%. This technical solution holds significant practical value and offers broad reference significance fir systematically addressing detection and recognition functions in optoeletronic equipment.

       

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