TY - JOUR PY - 2017// TI - Human activity recognition by analysis of skeleton joint position in internet of things (IOT) environment JO - Indian journal of science and technology A1 - Shrivastava, Rashmi A1 - Pandey, Manju SP - 1 EP - 9 VL - 10 IS - 16 N2 - OBJECTIVE: To provide automaticallyanalyzingand detecting human activities to provide better support in healthcare sector, security purpose etc. Method: We have used UTKinect-Action 3D dataset containing position of 20 body joint captured by Kinect sensor. We selected two set of joints J1 and J2; after that we have formed some rules for activity classification then we have applied SVM classifier, KNN classifier using Euclidean distance and KNN classifier using minkowski distance for activity classification. Findings: When we have used joint set J1 we got 97.8% accuracy with SVM classifier, 98.8% accuracy with KNN classifier using Euclidean distance, and 98.9% accuracy with KNN classifier using minkowski distance and for joint set J2 we got 97.7% accuracy with SVM classifier, 98.6% accuracy with KNN classifier using Euclidean distance, and 98.7% accuracy with KNN classifier using minkowski distance. Application/ Improvement: we have classified four activities hand waving, standing, sitting and picking. In future more activities can also be included in this study. IOT along with this activity recognition method can be used to reduce overheads.
Language: en
LA - en SN - 0974-6846 UR - http://dx.doi.org/10.17485/ijst/2017/v10i16/112362 ID - ref1 ER -