TY - EJOU AU - Al-Shurbaji, Tamara A. AU - AlKaabneh, Khalid A. AU - Alhadid, Issam AU - Masa’deh, Ra’ed TI - An Optimized Scale-Invariant Feature Transform Using Chamfer Distance in Image Matching T2 - Intelligent Automation \& Soft Computing PY - 2022 VL - 31 IS - 2 SN - 2326-005X AB - Scale-Invariant Feature Transform is an image matching algorithm used to match objects of two images by extracting the feature points of target objects in each image. Scale-Invariant Feature Transform suffers from long processing time due to embedded calculations which reduces the overall speed of the technique. This research aims to enhance SIFT processing time by imbedding Chamfer Distance Algorithm to find the distance between image descriptors instead of using Euclidian Distance Algorithm used in SIFT. Chamfer Distance Algorithm requires less computational time than Euclidian Distance Algorithm because it selects the shortest path between any two points when the distance is computed. To validate and evaluate the enhanced algorithm, A data set with (412) images including: (100) images with different degrees of rotation, (100) images with different intensity levels, (112) images with different measurement levels and (100) distorted images to different degrees were used; these images were applied according to four different criteria. The simulation results showed that the enhanced SIFT outperforms the ORB and the original Scale-Invariant Feature Transform in term of the processing time, and it reduces the overall processing time of the classical SIFT by (41%). KW - Image matching; image key points; SIFT; SURF; ORB; Chamfer distance algorithm; Euclidian distance algorithm DO - 10.32604/iasc.2022.019654