Deep neural network based object detectors are continuously evolving and are used in a multitude of applications, each having its own set of requirements. While safety-critical applications need high accuracy and reliability, low-latency tasks need resource and energy-efficient networks. Real-time detectors, which are a necessity in high-impact real-world applications, are continuously proposed, but they overemphasize the improvements in accuracy and speed while other capabilities such as versatility, robustness, resource and energy efficiency are omitted. A reference benchmark for existing networks does not exist, nor does a standard evaluation guideline for designing new networks, which results in ambiguous and inconsistent comparisons. We, thus, conduct a comprehensive study on multiple real-time detectors (anchor-, keypoint-, and transformer-based) on a wide range of datasets and report results on an extensive set of metrics. We also study the impact of variables such as image size, anchor dimensions, confidence thresholds, and architecture layers on the overall performance. We analyze the robustness of detection networks against distribution shifts, natural corruptions, and adversarial attacks. Also, we provide a calibration analysis to gauge the reliability of the predictions. Finally, to highlight the real-world impact, we conduct two unique case studies, on autonomous driving and healthcare applications. To further gauge the capability of networks in critical real-time applications, we report the performance after deploying the detection networks on edge devices. Our extensive empirical study can act as a guideline for the industrial community to make an informed choice on the existing networks. We also hope to inspire the research community towards a new direction in the design and evaluation of networks that focuses on a bigger and holistic overview for a far-reaching impact.
翻译:以深神经网络为基础的物体探测器正在不断演变,并被用于多种应用,每个应用都有自己的一套要求。尽管安全关键应用需要高度准确性和可靠性,低延迟任务需要资源和节能网络。不断提议实时探测器,这是影响大的现实世界应用软件所必须的,但它们过分强调准确性和速度的提高,而其他能力,如多功能、稳健性、资源和能源效率等,则没有现有网络的参照基准,也没有设计新网络的标准评价准则,从而导致模棱两可和不一致的比较。因此,我们对多个实时(固定、关键点和变异器)探测器进行全面研究,需要资源和节能网络的资源和网络;不断提议实时探测器,这是影响大范围现实世界应用软件的必备条件。我们还研究图像大小、锚定尺寸、信任阈限和结构层等其他变量对总体业绩的影响。我们分析检测网络在分布变化、自然腐败和对抗性攻击方面的坚固性能。我们还提供两次校准性分析,以测量多个实时概览网络(锁定、关键点和变异性应用的网络)的可靠性,然后进行我们进行一个深入的动态研究,然后进行我们进行一个动态诊断性研究,然后分析。我们进行一个动态数据库的判断性研究,然后研究,然后进行我们进行一个动态测试,然后研究,我们进行一个动态测试性研究,然后进行我们进行我们进行一个深入的实验性研究。我们进行一个动态测试。