This application claims priority to Taiwan Application Serial Number 107136584, filed Oct. 17, 2018, which is herein incorporated by reference.
The present disclosure relates to an intelligent driving method for passing intersections and an intelligent system thereof. More particularly, the present disclosure relates to an intelligent driving method for passing intersections based on a support vector machine and an intelligent system thereof.
Generally, many vehicles take turns or come toward each other at intersections and road junctions. A driver has to decide when to accelerate, decelerate or remain a constant speed while passing the intersections. Once the judgement of the driver is wrong, traffic accidents happen. According to the statistics in the United States, 40% traffic accidents happened at intersections or road junctions in 2008. According to the Federal Statistical Office of Germany, 47.5% traffic accidents happened at intersections or road junctions in 2013. Moreover, in some countries, more than 98% traffic accidents happened at intersections or road junctions.
In order to assist the driver's judgement for passing intersections, some practitioners developed highly automated vehicles with Artificial Intelligence (AI) paradigms, and a support vector machine is one of the machine learning algorithms. Through conducting models for prediction or estimation, the driving decisions, such as acceleration, deceleration or remaining a constant speed while passing intersections, can be provided.
In a real situation, the driver gives a driving decision based on the past information of the environment. In other words, the real driving decision has time relation. However, in the conventional training process of the support vector machine, although the dataset for training is observed and indexed in time order, the observed datasets at each sample point are considered independent, and the time series issue is not considered, which results in insufficient accuracy of the driving decision.
Based on the above-mentioned problem, how to efficiently improve the accuracy of the driving decision becomes a pursuit target for practitioners.
The present disclosure provides an intelligent driving method for passing intersections based on a support vector machine. The intelligent driving method is applied to a vehicle and includes a support vector machine providing step for providing the support vector machine. The support vector machine is trained by a training process. In the training process, a training dataset is provided to the support vector machine. The training dataset is formed by processing an original dataset via a dimensionality reducing module and a time scaling module. The original dataset includes a plurality of training samples. Each of the training samples includes a passing time for passing through an intersection, and p features and a decision of each of a plurality of sample points within the passing time. The p features are processed by the dimensionality reducing module to convert into k new features, where p and k are integers and p>k. The time scaling module provides a predicted time. The new features of one of the sample points and other new features of other sample points previous to the one of the sample points are deemed as a to-be-scaled sequence. The to-be-scaled sequence is converted by the time scaling module to form a scaled sequence, and a length of the scaled sequence is equal to a number of the sample points within the predicted time. The intelligent driving method includes a dataset processing step. The p features obtained by an environment sensing unit disposed at the vehicle are processed by the dimensionality reducing module and the time scaling module, and then are provided to the support vector machine for classification. The intelligent driving method further includes a deciding step for providing a driving decision to the vehicle based on a classed result of the support vector machine.
The present disclosure provides another intelligent driving method for passing intersections based on a support vector machine. The intelligent driving method is applied to a vehicle and includes a support vector machine providing step for providing the support vector machine. The support vector machine is trained by a training process. In the training process, a training dataset is provided to the support vector machine. The training dataset is formed by processing an original dataset via a dimensionality reducing module and a time scaling module. The original dataset includes a plurality of training samples. Each of the training samples includes a passing time for passing through an intersection, and p features and a decision of each of a plurality of sample points within the passing time. The p features are processed by the dimensionality reducing module to convert into k new features, where p and k are integers and p>k. The time scaling module provides a predicted time. The new features of one of the sample points and other new features of other sample points previous to the one of the sample points are deemed as a to-be-scaled sequence. When a length of the to-be-scaled sequence is less than a number of the sample points within the predicted time, an estimated value is added into the to-be-scaled sequence to form a new to-be-scaled sequence. The new to-be-scaled sequence is converted by the time scaling module to form a scaled sequence, and a length of the scaled sequence is equal to the number of the sample points within the predicted time. The intelligent driving method includes a dataset processing step. The p features obtained by an environment sensing unit disposed at the vehicle are processed by the dimensionality reducing module and the time scaling module, and then are provided to the support vector machine for classification. The intelligent driving method further includes a deciding step for providing a driving decision to the vehicle based on a classed result of the support vector machine.
The present disclosure provides an intelligent driving system for passing intersections based on a support vector machine. The intelligent driving system is applied to a vehicle and includes a processing unit and an environment sensing unit. The processing unit is disposed at the vehicle and includes a dimensionality reducing module, a time scaling module and the support vector machine. The dimensionality reducing module is for converting p features of each of a plurality of sample points into k new features, where p and k are integers, and p>k. A predicted time is provided by the time scaling module. The new features of one of the sample points and other new features of other sample points previous to the one of the sample points are deemed as a to-be-scaled sequence. The to-be-scaled sequence is converted by the time scaling module to form a scaled sequence, and a length of the scaled sequence is equal to a number of the sample points within the predicted time. The support vector machine is trained by a training dataset, and the training dataset is formed by processing an original dataset via the dimensionality reducing module and the time scaling module. The original dataset includes a plurality of training samples, and each of the training samples includes a passing time for passing through an intersection, and the p features and a decision of each of the sample points within the passing time. The environment sensing unit is disposed at the vehicle and is signally connected to the processing unit. The p features obtained by the environment sensing unit are processed by the dimensionality reducing module and the time scaling module and then are provided to the support vector machine for classification, and a driving decision is provided to the vehicle based on a classed result of the support vector machine.
The present disclosure can be more fully understood by reading the following detailed description of the embodiment, with reference made to the accompanying drawings as follows:
Please refer to
In the support vector machine providing step 110, the support vector machine is provided. The support vector machine is trained by a training process. In the training process, a training dataset is provided to the support vector machine. The training dataset is formed by processing an original dataset via a dimensionality reducing module and a time scaling module. The original dataset includes a plurality of training samples. Each of the training samples includes a passing time for passing through an intersection, and p features and a decision of each of a plurality of sample points within the passing time. The p features are processed by the dimensionality reducing module to convert into k new features, where p and k are integers, and p>k. The time scaling module provides a predicted time. The new features of one of the sample points and other new features of other sample points previous to the one of the sample points are deemed as a to-be-scaled sequence. The to-be-scaled sequence is converted by the time scaling module to form a scaled sequence, and a length of the scaled sequence is equal to a number of the sample points within the predicted time.
In the dataset processing step 120, the p features obtained by an environment sensing unit are processed by the dimensionality reducing module and the time scaling module, and then are provided to the support vector machine for classification.
In the deciding step 130, a driving decision is provided to the vehicle based on a classed result of the support vector machine.
Therefore, the data of the training dataset is time-independent, and the data of the features obtained in driving processed by the dimensionality reducing module and the time scaling module are time-dependent, which results an improved accuracy of the predicted result. The detail of the intelligent driving method 100 will be described in the following paragraphs.
The support vector machine is a classifier of supervised learning, which can provide classed results to assist driving. In the support vector machine providing step 110, the provided support vector machine is trained by the training process, and can provide classed results for driving decisions, such as deceleration, acceleration, and remaining the constant speed, as the vehicle is passing the intersection.
In the training process, the training samples of the training dataset can be formed by simulating the situation of the vehicle passing through the intersection. In the first embodiment, the simulation platform can be PreScan for development of Advanced Driver Assistance Systems (ADAS), which is produced by Tass international and can setup information of related intersections to simulate vehicles passing through the intersections. In other embodiment, the training samples can be, but not limited to, obtained from real roads or other simulation software.
Every time the vehicle passing through the intersection, the data obtained therefrom can be deemed as one train sample. In other words, if the vehicle passes through the intersection ten times, ten training samples will be obtained. Each of the training samples includes the passing time for passing through the intersection, and the p features and the decision of each of the plurality of sample points within the passing time. For example, in a first training sample, if the passing time is equal to 2 seconds and the sampling frequency is 2.5 times per second, five sample points will be gotten within the passing time. At each sample point, p features and one decision, e.g., acceleration, deceleration or remaining a constant speed, will be collected. The p features can include a relative horizontal velocity between the vehicle and an approaching vehicle, a relative horizontal acceleration between the vehicle and the approaching vehicle, a relative vertical velocity between the vehicle and the approaching vehicle, a relative vertical acceleration between the vehicle and the approaching vehicle, a distance between the vehicle and the approaching vehicle, a distance between the vehicle and the intersection, and a velocity of the approaching vehicle.
The data of the first training sample can be shown in Table 1. In a single training sample, the p features of each of the q sample points can be deemed as an original feature array X, where X=(x1, . . . , xp) and xi=(xil, . . . , xiq)T. Readers should understand that, when there are n training samples, there will be n original feature arrays Xl, and q will be rewritten as ql. n and q are positive integers. l is a positive integer from 1 to n, and i is a positive integer from 1 to p. All the decisions of n training samples can be deemed as a decision array ZZ, where ZZ=(x1, . . . , zn). In the following paragraphs, Tlw represents the wth sample point of the lth training sample. w is a positive integer from 1 to ql. xlwi represents the lth feature obtained at the sample point Tlw. Consequently, in Table 1, T11 represents the first sample point of the first training sample, which is 0.4 second in the first embodiment. T12 represents the second sample point of the first training sample, which is 0.8 second in the first embodiment. x111 represents the first feature of the first sample point T11 of the first training sample. x122 represents the second feature of the second sample point T12 of the first training sample. z13 represents the decision of the third sample point T13 of the first training sample. The naming rules of other symbols in Table 1 are the same and will not be describe again.
In a second training sample, if the passing time is equal to 2.4 seconds and the sampling frequency is 2.5 times per second, 6 sample points will be obtained. The data of the second training sample can be illustrated in Table 2.
If there are two training samples, the original dataset is consisted of the data of Table 1 and Table 2.
The original dataset can be converted into the training dataset by processing via the dimensionality reducing module and the time scaling module. A principal component analysis (PCA), a partial least squares regression (PLSR), a multidimensional scaling (MDS), a projection pursuit method, a principal component regression (PCR), a quadratic discriminant analysis (QDA), a regularized discriminant analysis (RDA) or a linear discriminant analysis (LDA) is performed in the dimensionality reducing module. Preferably, the principal component analysis is performed in the dimensionality reducing module. The equations of the principal component analysis are shown as Equation (1), Equation (2) and Equation (3).
Y=aTX (1).
yj=Σi=1pajixi, ∀j (2).
Σi=1paji=1, ∀j (3).
The above equations are expressed based on data of one sample point of one training sample, and the variable I of the training samples and the variable w of the sample points are not shown. Wherein Y represents the new feature array including k new features, that is, Y=(y1, . . . , yk), in which yj represents the jth new feature. When ql corresponding to each of the n training samples is taken into consideration, Yl=(y11, . . . , ylk) and Ylj1, . . . , yljq
Subsequently, the data processed by the dimensionality reducing module will be processed by the time scaling module. Because dataset input into a classifier of supervised learning should be of equal length, the cumulative data at each sample point will be of equal length.
A dynamic time warping (DWT) or a uniform scaling can be performed in the time scaling module. Preferably, the uniform scaling can be performed in the time scaling module.
When performing the uniform scaling, the predicted time can be provided by the time scaling module. The predicted time can be equal to a largest one of the passing times. Precisely, in the first embodiment, the passing time of the first training sample is equal to 2 seconds, and the passing time of the second training sample is equal to 2.4 seconds. The largest one of the passing times is 2.4 seconds such that the predicted time can be set to 2.4 seconds, and a number of the sample points within the predicted time is 6.
Before scaling, the new features of one of the sample points of one of the training samples and other new features of other sample points previous to the one of the sample points are deemed as the to-be-scaled sequence. Table 5 shows the to-be-scaled sequence. Lljw represents the to-be-scaled sequence, where Lljw=(ylj1, . . . , yljw). If the p features processed by the dimensionality reducing module convert into one new feature, j of each of the symbols in Table 5 will be set to 1.
Precisely, in Table 5, the to-be-scaled sequence Lljw includes all the jth new features ylj1-yljw of the first to the wth sample points Tl1-Tlw of the Ith training sample. For example, the to-be-scaled sequence L111 with w=1 and j=1 includes the first new feature y111 of the sample point T11 of the first training sample, and the length of the to-be-scaled sequence L111 is equal to 1, that is, the to-be-scaled sequence L111 is composed of one value. The to-be-scaled sequence L213 with w=3 and j=1 includes the first new features y211-y213 of the sample points T21-T23 of the second training sample, and the length of the to-be-scaled sequence L111 is equal to 3, that is, the to-be-scaled sequence L111 is composed of three values. Therefore, the to-be-scaled sequence converts into a scaled sequence by scaling, and the length of the scaled sequence is equal to the number of the sample points within the predicted time. Since the number of the sample points within the predicted time is equal to 6 in the first embodiment, the length of the scaled sequence is equal to 6. Hence, after processed by the time scaling module, the length of each of the scaled sequences is equal to 6. The scaled sequences are illustrated in Table 6, in which L*ljw represents the scaled sequence. If the p features processed by the dimensionality reducing module convert into one new feature, j of each of the symbols in Table 6 will be set to 1.
The to-be-scaled sequence Lljw converts into the scaled sequence L*ljw, where L*ljw=(L*ljw1, . . . , L*ljwr), by Equation (4) and Equation (5).
L*ljwr−ylj1, if └r×w/qs┘−0, for r=1, . . . , qs (4).
L*ljwr−ylj└r×w/q
Where qs represents the number of the sample points within the predicted time, and qs is smaller than or equal to ql. The predicted time can be equal to a largest one of the passing times, that is, qs=max(ql). └r×w/qs┘ represents the floor function, where └r×w/qs┘=max(m∈Z|m≤r×w/qs) and Z represents integers in mathematics. In other words, the result of r×w/qs is rounded off, and only the integer is remained.
For example, when the to-be-scaled sequence L113=(y111, y112, y113) is scaled into L*113=(L*1131, L*1132, L*1133, L*1134, L*1135, L*1136), the data of the first position of the to-be-scaled sequence L113 is put into the first position of the scaled sequence L*113, that is, L*1131=y111. The data of the first position of the to-be-scaled sequence L113 is put into the second position of the scaled sequence L*113, that is, L*1132=y111, because the result of 2×3/6 is equal to 1. The data of the first position of the to-be-scaled sequence L113 is put into the third position of the scaled sequence L*113, that is, L*1133=y111, because the result of 3×3/6, which is equal to 1.5, is rounded off to 1. The data of the second position of the to-be-scaled sequence L113 is put into the fourth position of the scaled sequence L*113, that is, L*1134=y112, because the result of 4×3/6 is equal to 2. The data of the second position of the to-be-scaled sequence L113 is put into the fifth position of the scaled sequence L*113, that is, L*1135=y112, because the result of 5×3/6 which is equal to 2.5, is rounded off to 2. The data of the third position of the to-be-scaled sequence L113 is put into the sixth position of the scaled sequence L*113, that is, L*1136=y113, because the result of 6×3/6 is equal to 3. Please be noted that when the length of the to-be-scaled sequence is larger than the number of the sample points within the predicted time, that is, the length of the to-be-scaled sequence is larger than the length of the scaled sequence, the to-be-scaled sequence can also be scaled down to achieve the purpose of the present disclosure.
(Yl, zl) represents the processed original dataset from the dimensionality reducing module and then is processed by the time scaling module to convert to the training dataset (L*l, zl), where L*l=(L*l1, . . . , L*lk), L*lj=(L*lj1, . . . , L*ljq
The training dataset can be provided to the support vector machine such that a hyperplane can be found. Equation (6) to Equation (9) can be used in the support vector machine. The hyperplane best separates the training dataset by minimizing Equation (6), subjecting to constraint of Equation (7). Moreover, the Lagrange multipliers are solved for the dual problem, which is expressed as Equation (8), subjecting to the constraints of ai>0 and Σl−1n αlzl−0.
Where C defines cost variable and is larger than zero. W defines entries parameter. W defines entries parameter. ξl defines slack variable. b defines intercept term. αd and αe are Lagrange multiplier. Φ is radial bias function which extends the support vector machine to handle the non-linear separable training dataset. L*l, L*d and L*e represent the scaled sequence L*lfwr, and for clear illustration, only one variable is shown. d and e are variables.
The support vector machine can find the hyperplane to assist providing driving decisions after training by the training dataset.
In the dataset processing process 120, while the vehicle is passing the intersection, the p features are obtained by the environment sensing unit. The environment sensing unit can include detecting devices such as radars, cameras and GPS devices for detecting the p features including distances, velocities, etc. The types and numbers of the detecting device are not limited thereto. The p features of each sample points will be processed by the dimensionality reducing module and the time scaling module. Subsequently, in the deciding step 130, the processed dataset can be input into the support vector machine. Since the support vector machine is trained by the training dataset in advance and already found the hyperplane, the p features of the real time sample point can be processed and input into the support vector machine to output the classified result for the driving decisions, i.e., acceleration, deceleration, and remaining a constant speed.
Please refer to
The vehicle V1 has a velocity of 40 km/hr, and the approaching vehicle V2 has a velocity within 15 km/hr to 40 km/hr. The p features includes a relative horizontal velocity between the vehicle V1 and the approaching vehicle V2, a relative horizontal acceleration between the vehicle V1 and the approaching vehicle V2, a relative vertical velocity between the vehicle V1 and the approaching vehicle V2, a relative vertical acceleration between the vehicle V1 and the approaching vehicle V2, a distance between the vehicle V1 and the approaching vehicle V2, a distance between the vehicle V1 and the T-intersection, and a velocity of the approaching vehicle V2. The original data in each of the first simulation, the second simulation, and the third simulation has 20 training samples. The decision includes acceleration, deceleration and remaining a constant speed. The original dataset of each of the first simulation, the second simulation, and the third simulation will be processed by the dimensionality reducing module and the time scaling module. The predicted time of the time scaling module in the first simulation, the second simulation, and the third simulation are set to 16.9 seconds, 28.8 seconds, and 21.7 seconds, respectively.
Please refer to
An accuracy (AC) comparison between the first simulation and a first comparison example under the same circumstance condition with the first simulation (no other vehicle on the horizontal line R1) is illustrated in Table 8. The first comparison example also adapts the support vector machine, but the difference is that the support vector machine of the first comparison example is only trained by the original dataset. According to the comparison result, it is clear that the accuracy of the first simulation is higher than the accuracy of the first comparison example.
An accuracy comparison between the second simulation and a second comparison example under the same circumstance condition with the second simulation (the approaching vehicle on the horizontal line R1 approaching from the left hand side) is illustrated in Table 9. The second comparison example also adapts the support vector machine, but the difference is that the support vector machine of the second comparison example is only trained by the original dataset. According to the comparison result, it is clear that the accuracy of the second simulation is higher than the accuracy of the second comparison example.
An accuracy comparison between the third simulation and a third comparison example under the same circumstance condition with the third simulation (the approaching vehicle on the horizontal line R1 approaching from the left hand side) is illustrated in Table 10. The third comparison example also adapts the support vector machine, but the difference is that the support vector machine of the third comparison example is only trained by the original dataset. According to the comparison result, it is clear that the accuracy of the third simulation is higher than the accuracy of the third comparison example.
Please be noted that all the tests are simulated by the PreScan, but the test can be conducted on a real road in other examples.
In a support vector machine providing step of a second embodiment of the present disclosure, the time scaling module provides a predicted time. The new features of one of the sample points and other new features of other sample points previous to the one of the sample points are deemed as a to-be-scaled sequence. When a length of the to-be-scaled sequence is less than a number of the sample points within the predicted time, an estimated value is added into the to-be-scaled sequence to form a new to-be-scaled sequence. The new to-be-scaled sequence is converted by the time scaling module to form a scaled sequence, and a length of the scaled sequence is equal to the number of the sample points within the predicted time.
Precisely, if the original dataset includes the data of Table 1 and Table 2 and the predicted time is set to be 2.4, the to-be-scaled sequence is illustrated in Table 5. Since the length of the to-be-scaled sequence corresponding to the accumulated sample point 0-T11, which is equal to 1, is smaller than the number of the sample points within the predicted time, which is equal to 6, and the features of the next sample point T12 is not obtained at the accumulated sample points 0-T11, an estimated value y′1j2 will be added to correspond to the sample point T12. Similarly, as illustrated in Table 5, all the lengths of the to-be-scaled sequences are smaller than 6, estimated values have to be added into each to-be-scaled sequences. The new to-be-scaled sequences are illustrated in Table 11, and y′ljw represents the estimated value. Please be noted that the two rows corresponding to the accumulate sample points 0-T15 and the accumulate sample points 0-T25, respectively, in Table 11 are rows who have a length of 6 after adding the estimated value and have no need be scaled, but in order to clearly show the difference between the to-be-scaled sequence and the new to-be-scaled sequence, the two rows are still listed in Table 11.
In the second embodiment, a conditional distribution of the estimated value can be obtained by using a joint distribution of the to-be-scaled sequences and a marginal distribution of the new feature yljw such that the estimated value can be obtained. The new feature yljw fits the marginal distribution (or the gaussian random process), that is, yljw˜GP(μjw, Σjw), and (μjw, Σjw) can be estimated by Equation (10) and Equation (11). In addition, the joint distribution of the new features yljw previous to the estimated value can be obtained from Equation (12), where w is larger than 2. c represents the cth training sample, and m represents the mth training sample in Equation (15).
Moreover, (μj[1:(t−1)], Σj[1:(t−1)]) (can be estimated by Equation (13), Equation (14) and Equation (15).
Finally, the conditional distribution of estimating the next time point based one the previous time points can be obtained, that is, estimating the sample point T12 based on the accumulate sample points 0-T11. The conditional distributions are illustrated as Equation (16) and Equation (17).
μ*jt=μjt+Σy
Σ*jt=Σjt−Σy
(μ*jt, Σ*jt) can be estimated by ({circumflex over (μ)}j[1:(t−1)], {circumflex over (Σ)}j[1:(t−1)]). After the conditional distribution is obtained, the estimated value can be estimated based on the conditional distribution (the estimated value can be set based on the Monte Carlo method).
Σy
The accuracy of the modified first simulation including the estimated values in the support vector machine providing step are illustrated in Table 12. The accuracy of the modified second simulation including the estimated values in the support vector machine providing step are illustrated in Table 13. The accuracy of the modified third simulation including the estimated values in the support vector machine providing step are illustrated in Table 14. From the results of Table 12, Table 13 and Table 14, it is known that the accuracy is increased when including the estimated values in the support vector machine providing step.
The environment sensing unit 220 is disposed at the vehicle and is signally connected to the processing unit 210. The p features obtained by the environment sensing unit 220 are processed by the dimensionality reducing module 211 and the time scaling module 212 and then are provided to the support vector machine 213 for classification, and a driving decision is provided to the vehicle based on a classed result of the support vector machine 213.
Therefore, the intelligent driving system 200 can assist the driver by giving the driving decisions such as acceleration, deceleration, and remaining a constant speed. The relationship between the dimensionality reducing module 211, the time scaling module 212, and the support vector machine 213 are as the above-mentioned description, and will not be mentioned again. The environment sensing unit 220 can include at least one of a radar, a camera and a GPS device.
The environment sensing unit can include detecting devices such as radars, cameras and GPS devices for detecting the p features including distances, velocities, etc. The types and amounts of the detecting device are no limited thereto.
Although the present disclosure has been described in considerable detail with reference to certain embodiments thereof, other embodiments are possible. Therefore, the spirit and scope of the appended claims should not be limited to the description of the embodiments contained herein.
It will be apparent to those skilled in the art that various modifications and variations can be made to the structure of the present disclosure without departing from the scope or spirit of the disclosure. In view of the foregoing, it is intended that the present disclosure cover modifications and variations of this disclosure provided they fall within the scope of the following claims.
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