Litcius/Paper detail

CNN-Based Mask-Pose Fusion for Detecting Specific Persons on Heterogeneous Embedded Systems

Jeong-Jun Lee, Jihoon Jang, Jin Hong Lee, Dayoung Chun, Hyun Kim

2021IEEE Access19 citationsDOIOpen Access PDF

Abstract

In recent times, numerous convolutional neural network (CNN) based detection models have been proposed and have shown excellent performance. However, because these models are generally developed to detect objects in class units (e.g., person, car), additional training processes with numerous datasets are required to find a specific object. This paper proposes a model that accurately detects specific persons by using top clothing color information without any additional training processes. The proposed method combines CNN-based instance segmentation and pose estimation, utilizing all the advantages of each technique. To avoid redundant computations, these two schemes are implemented as a filtering-based sequential operation structure. As a result, the proposed method has a 92.57% of accuracy in detecting a specific person with only a slight processing speed decrease. Furthermore, in this paper, the proposed model is efficiently ported on the heterogeneous embedded platform (i.e., NVIDIA Jetson AGX Xavier) with a parallel processing technique to maximize the hardware utilization.

Topics & Concepts

Computer scienceConvolutional neural networkPortingArtificial intelligencePoseObject detectionSegmentationComputationPattern recognition (psychology)Computer visionAlgorithmSoftwareProgramming languageAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsIndustrial Vision Systems and Defect Detection
CNN-Based Mask-Pose Fusion for Detecting Specific Persons on Heterogeneous Embedded Systems | Litcius