论文标题
轻型喷气机重建和识别作为对象检测任务
Lightweight Jet Reconstruction and Identification as an Object Detection Task
论文作者
论文摘要
我们将基于深卷积块的对象检测技术应用于CERN大型强子对撞机(LHC)遇到的端到端喷气识别和重建任务。在LHC上产生的碰撞事件并表示为由量热计和跟踪器单元组成的图像,作为单个射击检测网络的输入。名为PFJET-SSD的算法同时进行本地化,分类和回归任务来群集喷气机并重建其功能。这个多合一的单一馈送通行证在执行时间和改进的准确性W.R.T.方面具有优势。传统的基于规则的方法。通过网络减少,均质量化和优化的运行时获得进一步的增益,以满足典型的实时处理环境的记忆和延迟约束。我们实验了8位和三元量化,对单一精确浮点的精度和推理潜伏期进行了基准测试。我们表明,三元网络与其全精度等效的性能非常匹配,并且优于最先进的基于规则的算法。最后,我们报告了不同硬件平台上的推论潜伏期,并讨论了未来的应用程序。
We apply object detection techniques based on deep convolutional blocks to end-to-end jet identification and reconstruction tasks encountered at the CERN Large Hadron Collider (LHC). Collision events produced at the LHC and represented as an image composed of calorimeter and tracker cells are given as an input to a Single Shot Detection network. The algorithm, named PFJet-SSD performs simultaneous localization, classification and regression tasks to cluster jets and reconstruct their features. This all-in-one single feed-forward pass gives advantages in terms of execution time and an improved accuracy w.r.t. traditional rule-based methods. A further gain is obtained from network slimming, homogeneous quantization, and optimized runtime for meeting memory and latency constraints of a typical real-time processing environment. We experiment with 8-bit and ternary quantization, benchmarking their accuracy and inference latency against a single-precision floating-point. We show that the ternary network closely matches the performance of its full-precision equivalent and outperforms the state-of-the-art rule-based algorithm. Finally, we report the inference latency on different hardware platforms and discuss future applications.