Automatic detection of weapons is significant for improving security and well being of individuals, nonetheless, it is a difficult task due to large variety of size, shape and appearance of weapons. View point variations and occlusion also are reasons which makes this task more difficult. Further, the current object detection algorithms process rectangular areas, however a slender and long rifle may really cover just a little portion of area and the rest may contain unessential details. To overcome these problem, we propose a CNN architecture for Orientation Aware Weapons Detection, which provides oriented bounding box with improved weapons detection performance. The proposed model provides orientation not only using angle as classification problem by dividing angle into eight classes but also angle as regression problem. For training our model for weapon detection a new dataset comprising of total 6400 weapons images is gathered from the web and then manually annotated with position oriented bounding boxes. Our dataset provides not only oriented bounding box as ground truth but also horizontal bounding box. We also provide our dataset in multiple formats of modern object detectors for further research in this area. The proposed model is evaluated on this dataset, and the comparative analysis with off-the shelf object detectors yields superior performance of proposed model, measured with standard evaluation strategies. The dataset and the model implementation are made publicly available at this link: https://bit.ly/2TyZICF.
翻译:自动探测武器对于改善个人安全和福祉十分重要,然而,由于武器大小、形状和外观种类繁多,这是一项艰巨的任务。查看点变异和隔离也是使这项任务更加困难的原因。此外,目前物体探测算法过程的矩形区域,尽管一个细线和长步枪可能真正只覆盖面积的一小部分,而其余的则可能包含不必要的细节。为了克服这些问题,我们提议建立一个有线电视新闻网的定向识别武器结构,它提供定向检测武器性能改进的定制盒。拟议的模型不仅通过将角度分为八类,而且将角度划分为回归问题,将角度作为分类问题提供指导。为了培训我们的武器探测模型,由总共6400个武器图像组成的新数据集从网上收集起来,然后用定位框进行手动附加说明。我们的数据集不仅将捆绑框作为地面真相,而且还包括横向捆绑框。我们还以多种格式的现代物体探测器提供我们的数据数据集,供在这一领域进行进一步的研究。拟议的模型将这一数据集和比较分析模型与离层物体的模型用来进行。