Experiments on an RGB-D Wearable Vision System for Egocentric Activity Recognition
CVPR Workshops(2014)
摘要
This work describes and explores novel steps towards activity recognition from an egocentric point of view. Activity recognition is a broadly studied topic in computer vision, but the unique characteristics of wearable vision systems present new challenges and opportunities. We evaluate a challenging new publicly available dataset that includes trajectories of different users across two indoor environments performing a set of more than 20 different activities. The visual features studied include compact and global image descriptors, including GIST and a novel skin segmentation based histogram signature, and state-of-the art image representations for recognition, including Bag of SIFT words and Convolutional Neural Network (CNN) based features. Our experiments show that simple and compact features provide reasonable accuracy to obtain basic activity information (in our case, manipulation vs. non-manipulation). However, for finer grained categories CNN-based features provide the most promising results. Future steps include integration of depth information with these features and temporal consistency into the pipeline.
更多查看译文
关键词
global image descriptors,image representation,rgb-d wearable vision system,bag of sift words,skin segmentation,histogram signature,image segmentation,convolutional neural network,image recognition,image sensors,gist,image representations,computer vision,egocentric activity recognition,activity information,neural nets,compact image descriptors,cnn-based features,skin,sensors,histograms
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络