探测器
计算机科学
滑动窗口协议
人工智能
级联
模式识别(心理学)
特征(语言学)
恒虚警率
假警报
图像(数学)
骨料(复合)
目标检测
窗口(计算)
数据挖掘
工程类
电信
语言学
哲学
材料科学
化学工程
复合材料
操作系统
作者
Mohamed E. Hussein,Fatih Porikli,L.S. Davis
出处
期刊:IEEE Transactions on Intelligent Transportation Systems
[Institute of Electrical and Electronics Engineers]
日期:2009-07-22
卷期号:10 (3): 417-427
被引量:49
标识
DOI:10.1109/tits.2009.2026670
摘要
We introduce a framework for evaluating human detectors that considers the practical application of a detector on a full image using multisize sliding-window scanning. We produce detection error tradeoff (DET) curves relating the miss detection rate and the false-alarm rate computed by deploying the detector on cropped windows and whole images, using, in the latter, either image resize or feature resize. Plots for cascade classifiers are generated based on confidence scores instead of on variation of the number of layers. To assess a method's overall performance on a given test, we use the average log miss rate (ALMR) as an aggregate performance score. To analyze the significance of the obtained results, we conduct 10-fold cross-validation experiments. We applied our evaluation framework to two state-of-the-art cascade-based detectors on the standard INRIA person dataset and a local dataset of near-infrared images. We used our evaluation framework to study the differences between the two detectors on the two datasets with different evaluation methods. Our results show the utility of our framework. They also suggest that the descriptors used to represent features and the training window size are more important in predicting the detection performance than the nature of the imaging process, and that the choice between resizing images or features can have serious consequences.
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