HyperAI超神经

3D Point Cloud Classification On Modelnet40

评估指标

Overall Accuracy

评测结果

各个模型在此基准测试上的表现结果

比较表格
模型名称Overall Accuracy
point-convolutional-neural-networks-by92.3
pct-point-cloud-transformer93.2
let-images-give-you-more-point-cloud-cross94.4
masked-autoencoders-for-point-cloud-self94.0
point-cloud-classification-using-content93.5
interpolated-convolutional-networks-for-3d93.0
point2vec-for-self-supervised-representation94.8
relation-shape-convolutional-neural-network92.9
pointnet-deep-hierarchical-feature-learning90.7
dspoint-dual-scale-point-cloud-recognition93.5
geometric-feedback-network-for-point-cloud93.8
sagemix-saliency-guided-mixup-for-point90.3
point-m2ae-multi-scale-masked-autoencoders94.0
parameter-is-not-all-you-need-starting-from93.8
attention-based-point-cloud-edge-sampling93.5
模型 1694.9
pointnext-revisiting-pointnet-with-improved94.0
perceiver-general-perception-with-iterative-
learning-geometry-disentangled-representation93.8
generative-and-discriminative-voxel-modeling-
dynamic-local-geometry-capture-in-3d92.1
mvtn-multi-view-transformation-network-for-3d93.8
fg-net-fast-large-scale-lidar-point93.8
point-cloud-pre-training-by-mixing-and93.39
kpconv-flexible-and-deformable-convolution92.9
anisotropic-separable-set-abstraction-for92.9
rethinking-masked-representation-learning-for94.5
pointcutmix-regularization-strategy-for-point93.4
advanced-feature-learning-on-point-clouds93.3
3d-point-cloud-classification-and91.6
paconv-position-adaptive-convolution-with93.9
point-transformer-v2-grouped-vector-attention94.2
pointmixer-mlp-mixer-for-point-cloud93.6
general-purpose-deep-point-cloud-feature91.7
deltaconv-anisotropic-point-cloud-learning93.8
shellnet-efficient-point-cloud-convolutional93.1
pointnet-deep-learning-on-point-sets-for-3d89.2
point-cloud-pre-training-by-mixing-and93.31
positional-prompt-tuning-for-efficient-3d93.88
multi-view-convolutional-neural-networks-for90.1
revisiting-point-cloud-classification-with-a93.9
learning-inner-group-relations-on-point94.1
lcpformer-towards-effective-3d-point-cloud93.6
mamba3d-enhancing-local-features-for-3d-point95.1
point-transformer92.8
escape-from-cells-deep-kd-networks-for-the90.6
adacrossnet-adaptive-dynamic-loss-weighting93.1
generative-and-discriminative-voxel-modeling-
volumetric-and-multi-view-cnns-for-object89.2
point-voxel-transformer-an-efficient-approach94.0
3d-medical-point-transformer-introducing93.4
pcp-mae-learning-to-predict-centers-for-point94.2
pointcnn-convolution-on-x-transformed-points92.2
rethinking-the-compositionality-of-point94.5
rethinking-network-design-and-local-geometry-194.5
pointconv-deep-convolutional-networks-on-3d92.5
attention-based-point-cloud-edge-sampling93.8
3d-shapenets-a-deep-representation-for-
p2p-tuning-pre-trained-image-models-for-point94.0
point-transformer-193.7
so-net-self-organizing-network-for-point90.9
dynamic-graph-cnn-for-learning-on-point92.9
a-deep-dive-into-explainable-self-supervised94.2
pointasnl-robust-point-clouds-processing93.2
point-m2ae-multi-scale-masked-autoencoders92.9
surface-representation-for-point-clouds94.7
19040801792.6
modelnet-o-a-large-scale-synthetic-dataset94.0
revisiting-point-cloud-shape-classification93.9
parameter-efficient-fine-tuning-in-spectral95.3
point2sequence-learning-the-shape92.6
rethinking-masked-representation-learning-for94.3
模型 7393.1
pointscnet-point-cloud-structure-and93.7
contrast-with-reconstruct-contrastive-3d94.7
point-jepa-a-joint-embedding-predictive94.1±0.1
ulip-learning-unified-representation-of93.4
regularization-strategy-for-point-cloud-via93.5
ulip-learning-unified-representation-of94.7
decoupled-local-aggregation-for-point-cloud94.0
towards-compact-3d-representations-via-point94.5
sagemix-saliency-guided-mixup-for-point93.3
spatio-temporal-self-supervised93.1
shapellm-universal-3d-object-understanding95.0
polynet-polynomial-neural-network-for-3d92.42
pointgrid-a-deep-network-for-3d-shape92.0
ckconv-learning-feature-voxelization-for94.0
instance-aware-dynamic-prompt-tuning-for-pre94.4
deepgcns-making-gcns-go-as-deep-as-cnns93.6
escape-from-cells-deep-kd-networks-for-the91.8
dense-resolution-network-for-point-cloud93.1
local-spectral-graph-convolution-for-point92.1
spidercnn-deep-learning-on-point-sets-with92.4
person-re-identification-in-the-3d-space93.3
implicit-autoencoder-for-point-cloud-self94.2
regress-before-construct-regress-autoencoder94.1
manifold-net-using-manifold-learning-for93.0
crossmoco-multi-modal-momentum-contrastive91.49
point-bert-pre-training-3d-point-cloud93.8
point-is-a-vector-a-feature-representation-in93.5
points-to-patches-enabling-the-use-of-self92.6
point-jepa-a-joint-embedding-predictive93.8±0.2
dynamic-edge-conditioned-filters-in87.4
pra-net-point-relation-aware-network-for-3d93.7
3d-jepa-a-joint-embedding-predictive94.0
point-planenet-plane-kernel-based92.1
walk-in-the-cloud-learning-curves-for-point94.2
sagemix-saliency-guided-mixup-for-point93.6
dualmlp-a-two-stream-fusion-model-for-3d93.7
ulip-learning-unified-representation-of94.1