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Self-Similarity Descriptor and Local Descriptor-Based Composite Sketch Matching

机译:自相似性描述符和基于本地描述符的复合草图匹配

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Composite sketching belongs to the forensic science where the sketches are drawn using freely available composite sketch generator tools. Compared to pencil sketches, composite sketches are more effective because it consumes less time. It can be easily adopted by people across different regions; moreover, it does not require any skilled artist for drawing the suspects faces. Software tool used to generate the faces provides more features which can be used by the eyewitness to provide better description, which increases the clarity of the sketches. Even the minute details of the eyewitness description can be captured with great accuracy, which is mostly impossible in pencil sketches. Now that a composite sketch is provided, it has to be identified effectively. In this paper we have analyzed two state-of-the-art techniques for composite sketch image recognition: Self-similarity descriptor (SSD)-based composite sketch recognition and local descriptors (LD)-based composite sketch recognition. SSD is mainly used for developing a SSD dictionary-based feature extraction and Gentle Boost KO classifier-based composite sketch to digital face image matching algorithm. LD is mainly used for multiscale patch-based feature extraction and boosting approach for matching composites with digital images. These two techniques are validated on FACES and IdentiKit databases. From our analysis we have found that SSD descriptor works better than LD. Using SSD method we obtained the results for FACES (ca) as 51.9 which is greater when compared to LD which gives a result of 45.8. Similarly, using SSD, values of 42.6 and 45.3 for FACES (As) and IdentiKit (As), respectively, are obtained which are much better than the values of 20.2 and 33.7 for FACES (As) and IdentiKit (As), respectively, using LD method.
机译:复合素描属于法医学,使用自由可用的复合素描发生器工具绘制草图。与铅笔草图相比,复合草图更有效,因为它会消耗更少的时间。跨越不同地区的人很容易采用它;此外,它不需要任何熟练的艺术家来吸引嫌疑人面孔。用于生成面的软件工具提供了更多功能,即目击者可以提供更好的描述,从而提高了草图的清晰度。即使是目击者描述的分钟细节也可以以极高的准确性捕获,这在铅笔草图中主要是不可能的。现在提供了一种复合草图,必须有效地识别。在本文中,我们分析了用于复合草图图像识别的两个最先进的技术:自相似性描述符(SSD)基于复合草图识别和本地描述符(LD)被基于复合草图识别。 SSD主要用于开发基于SSD字典的特征提取和柔性Boost KO分类器的复合草图,用于数字面部图像匹配算法。 LD主要用于基于多尺度补丁的特征提取和升压方法,用于匹配数字图像的复合材料。这两种技术在面部和识别数据库上验证。从我们的分析中,我们发现SSD描述符优于LD。使用SSD方法,我们将面孔(CA)的结果获得为51.9,当与LD相比,该结果更大,其产生45.8。类似地,使用SSD,对于面孔(AS)和Identikit(AS)的比例分别使用SSD(AS)和识别(AS),这些值远远超过面孔(AS)和Identikit(AS)的20.2和33.7的值LD方法。

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