Hybrid features for object detection in RGB-D scenes
Object detection is considered a hot research topic in applications of artificial intelligence and computer vision. Historically, object detection was widely used in various fields like surveillance, fine-grained activities and robotics. All studies focus on improving accuracy for object detection using images, whether indoor or outdoor scenes. Therefore, this paper took a shot by improving the doable features extraction and proposing crossed sliding window approach using exiting classifiers for object detection. In this paper, the contribution includes two parts: First, improving local depth pattern feature alongside SIFT, and the second part explains a new technique presented by proposing crossed sliding window approach using two different types of images (colored and depth). Two types of features local depth patterns for detection (LDPD) and scale-invariant feature transform (SIFT) were merged as one feature vector. The RGB-D object dataset has been used and it consists of 300 different objects, and includes thousands of scenes. The proposed approach achieved high results comparing to other features or separated features that are used in this paper. All experiments and comparatives were applied on the same dataset for the same objective. Experimental results report a high accuracy in terms of detection rate, recall, precision, and F1 score in RGB-D scenes.
Publishing Year
2021