Latent Fingerprint Recognition using Hybrid Ant Colony Optimization and Cuckoo Search

Richa Jindal, Sanjay Singla
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引用次数: 1

Abstract

Latent fingerprints are adapted as prominent evidence for the identification of crime suspects from ages. The unavailability of complete minutiae information, poor quality of impressions, and overlapping of multi-impressions make the latent fingerprint recognition process a challenging task. Although the contributions in the field are efficient for determining the match, there is a requirement to ameliorate the existing techniques as false identification can put the benign behind bars. This research work has amalgamated the Cuckoo Search (CS) algorithm with Ant Colony Optimization (ACO) for the recognition of latent fingerprints. It reduces the demerits of the individual cuckoo search algorithm, such as the probability of falling into local optima, the inefficient creation of nests at the boundary due to random walk and Levy flight attributes. The positive feedback mechanism of ant colony optimization makes it easy to combine with other techniques, reducing the risk of local failure and evaluating the global best solution. Prior to the evaluation of the proposed amalgamated technique on the latent fingerprint dataset of NIST SD-27, it is tested with the benchmark functions for different shapes and physical attributes. The benchmark testing and latent fingerprint evaluation result in the betterment of the amalgamated technique over the individual cuckoo search algorithm. The state-of-the-art comparison indicates that the amalgamation technique outperformed the other fingerprint matching techniques.
基于混合蚁群优化和布谷鸟搜索的潜在指纹识别
潜存指纹是识别不同年龄犯罪嫌疑人的重要证据。完整的细节信息的不可获得性、印痕质量差以及多印痕的重叠等问题使得隐性指纹识别过程具有挑战性。尽管该领域的贡献对于确定匹配是有效的,但仍需要改进现有的技术,因为错误的识别可能会使良性的人入狱。本研究将布谷鸟搜索算法(CS)与蚁群优化算法(ACO)相结合,用于潜在指纹的识别。它降低了个体布谷鸟搜索算法陷入局部最优的概率,以及由于随机行走和Levy飞行属性导致的边界筑巢效率低下等缺点。蚁群优化的正反馈机制使其易于与其他技术相结合,降低了局部失效的风险,并评估了全局最优解。在NIST SD-27潜在指纹数据集上对所提出的融合技术进行评估之前,使用不同形状和物理属性的基准函数对其进行了测试。基准测试和潜在指纹评价结果表明,混合技术优于单个布谷鸟搜索算法。最先进的比较表明,合并技术优于其他指纹匹配技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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