ABSTRACT Researchers have proposed several ways of diagnosing, classifying and categorizing bone fractures. Nevertheless, no standardized classification has yet been established for all identified fractures. In recent times Machine learning and deep learning are becoming more popular. Deep Neural Networks (DNN) are well-known models for their image classification capabilities and capacity to tackle complex problems. To categorize (normal, comminute, oblique, spiral, greenstick, impacted, and transverse) and recognize fragmented images, the -Speeded Up Robust Features (SURF) and Scale Invariant Feature Transform (SIFT) feature extraction approaches were utilized for several algorithms: K-Nearest Neighbor (KNN), Support Vector Machine (SVM), Random Forest (RF), Inception V3 and ResNeXt101. This research aims to construct an image processing system, including information from X-ray and Computer Tomography (CT) scans, classifying bone fractures rapidly and precisely. Pre-processing, quality enhancement, and extraction techniques are utilized to process X-ray images of the shattered bone collected from the hospital. The images are then separated and classified into fractured and unfractured bones and are compared with the accuracy of other methodologies like KNN, SVM, RF, InceptionV3, and ResNeXt101. According to the findings, the bone fracture detection and classification system perform well-using ResNeXt101, with an accuracy rate of 93.75%.