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. 2024 Nov 22;24(23):7463. doi: 10.3390/s24237463

Table 1.

Related work summary.

Reference Input Method Contribution
 [6,8,9,10,14] Single-view ML Hand-crafted geometric features represent vehicles for detection and classification using ML-based algorithms
 [11,12] Single-view DL CNN models are proposed to perform automatic feature learning for vehicle detection and classification
 [65] Single-view Eigenvalue decomposition Eigenvehicles are introduced as an unsupervised feature representation method for vehicle recognition
 [66,67,68] Single-view Nonnegative factorization A part-based model is employed for vehicle recognition via non-negative matrix/tensor factorization
 [72,73,74] Single-view DL-based MTL MTL models based on DL are employed to simultaneously perform multiple tasks, including road segmentation, vehicle detection and classification
 [92] Multi-view DL This work employs a YOLO-based model that fuses camera and LiDAR data at multiple levels
 [61,93,94] Single-view ML Single-view features, such as HOG, Haar wavelets, or GLCM, represent vehicles for classification in ML models
 [95] Multi-view Tucker decomposition A tensor decomposition is employed for feature selection of HOG, LBP, and FDF features
 [70,71,96] Multi-view MVL MVL approaches are proposed to enhance vehicle detection, classification, and background modeling by learning richer data representations from color features
 [30,97,98,99,100] These works provide theoretical foundations on tensors and its operations, such as the Einstein and Hadamard products, with applications across multiple domains
 [32,77,78,79,80,81,82,83,90] DL Matrix and tensor decompositions are employed for speeding up CNNs by compressing FC and Conv layers and reducing the dimensionality of their input space
 [91] DL Multilinear layers are introduced for dimensionality reduction and regression purposes in CNNs, leveraging tensor decompositions for efficient computation.